コード例 #1
0
def main():
    ap = argparse.ArgumentParser(description='run model on tileset')
    ap.add_argument('model', help='path to model checkpoint')
    ap.add_argument('config', help='path to model config')
    ap.add_argument('tiles', help='path to XYZ tile folder')
    ap.add_argument('outputdir', help='name for tile output')
    ap.add_argument('--aws_profile',
                    help='AWS Profile Name',
                    default='default')

    args = ap.parse_args()

    config = load_config(args.config)
    tiles = S3SlippyMapTiles(args.tiles,
                             mode='multibands',
                             aws_profile=args.aws_profile)
    net = model(config, args.model)

    loader = DataLoader(tiles,
                        batch_size=config['model']['batch_size'],
                        shuffle=True,
                        num_workers=1)

    palette = make_palette(config["classes"][0]["color"])

    fs = s3fs.S3FileSystem(session=boto3.Session(profile_name='esip'))

    outputdir = args.outputdir[5:] + '/' + os.path.basename(args.tiles)
    print("Saving predictions to {}.".format(outputdir))

    predict(net, loader, outputdir, palette, fs)
コード例 #2
0
def write_tile(root, tile, colors, out):
    """ """

    out_path = os.path.join(root, str(tile.z), str(tile.x))
    os.makedirs(out_path, exist_ok=True)

    out = Image.fromarray(out, mode="P")
    out.putpalette(complementary_palette(make_palette(colors[0], colors[1])))
    out.save(os.path.join(out_path, "{}.png".format(tile.y)), optimize=True)
コード例 #3
0
def main(args):
    config = load_config(args.config)
    num_classes = len(config["classes"])
    batch_size = args.batch_size if args.batch_size else config["model"][
        "batch_size"]
    tile_size = args.tile_size if args.tile_size else config["model"][
        "tile_size"]

    if torch.cuda.is_available():
        device = torch.device("cuda")
        torch.backends.cudnn.benchmark = True
    else:
        device = torch.device("cpu")

    def map_location(storage, _):
        return storage.cuda() if torch.cuda.is_available() else storage.cpu()

    # https://github.com/pytorch/pytorch/issues/7178
    chkpt = torch.load(args.checkpoint, map_location=map_location)

    models = [
        name for _, name, _ in pkgutil.iter_modules(
            [os.path.dirname(robosat_pink.models.__file__)])
    ]
    if config["model"]["name"] not in [model for model in models]:
        sys.exit("Unknown model, thoses available are {}".format(
            [model for model in models]))

    std = []
    mean = []
    num_channels = 0
    for channel in config["channels"]:
        std.extend(channel["std"])
        mean.extend(channel["mean"])
        num_channels += len(channel["bands"])

    encoder = config["model"]["encoder"]
    pretrained = config["model"]["pretrained"]

    model_module = import_module("robosat_pink.models.{}".format(
        config["model"]["name"]))

    net = getattr(model_module, "{}".format(config["model"]["name"].title()))(
        num_classes=num_classes,
        num_channels=num_channels,
        encoder=encoder,
        pretrained=pretrained).to(device)

    net = torch.nn.DataParallel(net)

    net.load_state_dict(chkpt["state_dict"])
    net.eval()

    transform = Compose([ImageToTensor(), Normalize(mean=mean, std=std)])
    directory = BufferedSlippyMapTiles(args.tiles,
                                       transform=transform,
                                       size=tile_size,
                                       overlap=args.overlap)
    loader = DataLoader(directory,
                        batch_size=batch_size,
                        num_workers=args.workers)

    palette = make_palette(config["classes"][0]["color"],
                           config["classes"][1]["color"])

    # don't track tensors with autograd during prediction
    with torch.no_grad():
        for images, tiles in tqdm(loader,
                                  desc="Eval",
                                  unit="batch",
                                  ascii=True):
            images = images.to(device)
            outputs = net(images)

            # manually compute segmentation mask class probabilities per pixel
            probs = torch.nn.functional.softmax(outputs,
                                                dim=1).data.cpu().numpy()

            for tile, prob in zip(tiles, probs):
                x, y, z = list(map(int, tile))

                # we predicted on buffered tiles; now get back probs for original image
                prob = directory.unbuffer(prob)

                assert prob.shape[
                    0] == 2, "single channel requires binary model"
                assert np.allclose(
                    np.sum(prob, axis=0), 1.0
                ), "single channel requires probabilities to sum up to one"

                image = np.around(prob[1:, :, :]).astype(np.uint8).squeeze()

                out = Image.fromarray(image, mode="P")
                out.putpalette(palette)

                os.makedirs(os.path.join(args.probs, str(z), str(x)),
                            exist_ok=True)
                path = os.path.join(args.probs, str(z), str(x),
                                    str(y) + ".png")

                out.save(path, optimize=True)

    if args.web_ui:
        template = "leaflet.html" if not args.web_ui_template else args.web_ui_template
        base_url = args.web_ui_base_url if args.web_ui_base_url else "./"
        tiles = [tile for tile, _ in tiles_from_slippy_map(args.tiles)]
        web_ui(args.probs, base_url, tiles, tiles, "png", template)
コード例 #4
0
def main(args):
    config = load_config(args.config)
    num_classes = len(config["classes"])
    batch_size = args.batch_size if args.batch_size else config["model"][
        "batch_size"]
    tile_size = args.tile_size if args.tile_size else config["model"][
        "tile_size"]

    if torch.cuda.is_available():
        device = torch.device("cuda")
        torch.backends.cudnn.benchmark = True
    else:
        device = torch.device("cpu")

    def map_location(storage, _):
        return storage.cuda() if torch.cuda.is_available() else storage.cpu()

    # https://github.com/pytorch/pytorch/issues/7178
    # chkpt = torch.load(args.checkpoint, map_location=map_location)
    S3_CHECKPOINT = False
    chkpt = args.checkpoint
    if chkpt.startswith("s3://"):
        S3_CHECKPOINT = True
        # load from s3
        chkpt = chkpt[5:]

    models = [
        name for _, name, _ in pkgutil.iter_modules(
            [os.path.dirname(robosat_pink.models.__file__)])
    ]
    if config["model"]["name"] not in [model for model in models]:
        sys.exit("Unknown model, thoses available are {}".format(
            [model for model in models]))

    num_channels = 0
    for channel in config["channels"]:
        num_channels += len(channel["bands"])

    pretrained = config["model"]["pretrained"]
    encoder = config["model"]["encoder"]

    model_module = import_module("robosat_pink.models.{}".format(
        config["model"]["name"]))

    net = getattr(model_module, "{}".format(config["model"]["name"].title()))(
        num_classes=num_classes,
        num_channels=num_channels,
        encoder=encoder,
        pretrained=pretrained).to(device)

    net = torch.nn.DataParallel(net)

    try:
        if S3_CHECKPOINT:
            sess = boto3.Session(profile_name=args.aws_profile)
            fs = s3fs.S3FileSystem(session=sess)
            with s3fs.S3File(fs, chkpt, 'rb') as C:
                state = torch.load(io.BytesIO(C.read()),
                                   map_location=map_location)
        else:
            state = torch.load(chkpt, map_location=map_location)
        net.load_state_dict(state['state_dict'])
        net.to(device)
    except FileNotFoundError as f:
        print("{} checkpoint not found.".format(CHECKPOINT))

    net.eval()
    #
    # mean = np.array([[[8237.95084794]],
    #
    #                [[6467.98702156]],
    #
    #                [[6446.61743148]],
    #
    #                [[4520.95360105]]])
    # std  = array([[[12067.03414753]],
    #
    #                [[ 8810.00542703]],
    #
    #                [[10710.64289882]],
    #
    #                [[ 9024.92028515]]])
    # #transform = Compose([ImageToTensor(), Normalize(mean=mean, std=std)])
    # transform = A.Compose([
    #     A.Normalize(mean = mean, std = std, max_pixel_value = 1.0),
    #     A.ToFloat()
    # ])

    if args.tiles.startswith('s3://'):
        directory = S3SlippyMapTiles(args.tiles,
                                     mode='multibands',
                                     transform=None,
                                     aws_profile=args.aws_profile)
    else:
        directory = SlippyMapTiles(args.tiles,
                                   mode="multibands",
                                   transform=transform)
    # directory = BufferedSlippyMapDirectory(args.tiles, transform=transform, size=tile_size, overlap=args.overlap)
    loader = DataLoader(directory,
                        batch_size=batch_size,
                        num_workers=args.workers)

    palette = make_palette(config["classes"][0]["color"])

    # don't track tensors with autograd during prediction
    with torch.no_grad():
        for tiles, images in tqdm(loader,
                                  desc="Eval",
                                  unit="batch",
                                  ascii=True):
            tiles = list(zip(tiles[0], tiles[1], tiles[2]))
            images = images.to(device)
            outputs = net(images)

            print(len(tiles), len(outputs))
            for tile, prob in zip([tiles], outputs):
                savedir = args.probs
                x = tile[0].item()
                y = tile[1].item()
                z = tile[2].item()

                # manually compute segmentation mask class probabilities per pixel

                image = (prob > args.threshold).astype(np.uint8)

                out = Image.fromarray(image, mode="P")
                out.putpalette(palette)

                os.makedirs(os.path.join(args.probs, str(z), str(x)),
                            exist_ok=True)
                path = os.path.join(args.probs, str(z), str(x),
                                    str(y) + ".png")

                out.save(path, optimize=True)

    if args.web_ui:
        template = "leaflet.html" if not args.web_ui_template else args.web_ui_template
        base_url = args.web_ui_base_url if args.web_ui_base_url else "./"
        tiles = [tile for tile, _ in tiles_from_slippy_map(args.tiles)]
        web_ui(args.probs, base_url, tiles, tiles, "png", template)
コード例 #5
0
def main(args):

    if not args.workers:
        args.workers = max(1, math.floor(os.cpu_count() * 0.5))

    if args.label:
        config = load_config(args.config)
        check_classes(config)
        colors = [classe["color"] for classe in config["classes"]]
        palette = make_palette(*colors)

    splits_path = os.path.join(os.path.expanduser(args.out), ".splits")
    tiles_map = {}

    print("RoboSat.pink - tile on CPU, with {} workers".format(args.workers))

    bands = -1
    for path in args.rasters:
        try:
            raster = rasterio_open(path)
            w, s, e, n = transform_bounds(raster.crs, "EPSG:4326", *raster.bounds)
        except:
            sys.exit("Error: Unable to load raster {} or deal with it's projection".format(args.raster))

        if bands != -1:
            assert bands == len(raster.indexes), "Coverage must be bands consistent"
        bands = len(raster.indexes)

        tiles = [mercantile.Tile(x=x, y=y, z=z) for x, y, z in mercantile.tiles(w, s, e, n, args.zoom)]
        for tile in tiles:
            tile_key = (str(tile.x), str(tile.y), str(tile.z))
            if tile_key not in tiles_map.keys():
                tiles_map[tile_key] = []
            tiles_map[tile_key].append(path)

    if args.label:
        ext = "png"
        bands = 1
    if not args.label:
        if bands == 1:
            ext = "png"
        if bands == 3:
            ext = "webp"
        if bands > 3:
            ext = "tiff"

    tiles = []
    progress = tqdm(total=len(tiles_map), ascii=True, unit="tile")
    # Begin to tile plain tiles
    with futures.ThreadPoolExecutor(args.workers) as executor:

        def worker(path):

            raster = rasterio_open(path)
            w, s, e, n = transform_bounds(raster.crs, "EPSG:4326", *raster.bounds)
            transform, _, _ = calculate_default_transform(raster.crs, "EPSG:3857", raster.width, raster.height, w, s, e, n)
            tiles = [mercantile.Tile(x=x, y=y, z=z) for x, y, z in mercantile.tiles(w, s, e, n, args.zoom)]
            tiled = []

            for tile in tiles:

                try:
                    w, s, e, n = mercantile.xy_bounds(tile)

                    # inspired by rio-tiler, cf: https://github.com/mapbox/rio-tiler/pull/45
                    warp_vrt = WarpedVRT(
                        raster,
                        crs="epsg:3857",
                        resampling=Resampling.bilinear,
                        add_alpha=False,
                        transform=from_bounds(w, s, e, n, args.ts, args.ts),
                        width=math.ceil((e - w) / transform.a),
                        height=math.ceil((s - n) / transform.e),
                    )
                    data = warp_vrt.read(
                        out_shape=(len(raster.indexes), args.ts, args.ts), window=warp_vrt.window(w, s, e, n)
                    )
                    image = np.moveaxis(data, 0, 2)  # C,H,W -> H,W,C
                except:
                    sys.exit("Error: Unable to tile {} from raster {}.".format(str(tile), raster))

                tile_key = (str(tile.x), str(tile.y), str(tile.z))
                if not args.label and len(tiles_map[tile_key]) == 1 and is_border(image):
                    progress.update()
                    continue

                if len(tiles_map[tile_key]) > 1:
                    out = os.path.join(splits_path, str(tiles_map[tile_key].index(path)))
                else:
                    out = args.out

                x, y, z = map(int, tile)

                if not args.label:
                    ret = tile_image_to_file(out, mercantile.Tile(x=x, y=y, z=z), image)
                if args.label:
                    ret = tile_label_to_file(out, mercantile.Tile(x=x, y=y, z=z), palette, image)

                if not ret:
                    sys.exit("Error: Unable to write tile {} from raster {}.".format(str(tile), raster))

                if len(tiles_map[tile_key]) == 1:
                    progress.update()
                    tiled.append(mercantile.Tile(x=x, y=y, z=z))

            return tiled

        for tiled in executor.map(worker, args.rasters):
            if tiled is not None:
                tiles.extend(tiled)

    # Aggregate remaining tiles splits
    with futures.ThreadPoolExecutor(args.workers) as executor:

        def worker(tile_key):

            if len(tiles_map[tile_key]) == 1:
                return

            image = np.zeros((args.ts, args.ts, bands), np.uint8)

            x, y, z = map(int, tile_key)
            for i in range(len(tiles_map[tile_key])):
                root = os.path.join(splits_path, str(i))
                _, path = tile_from_slippy_map(root, x, y, z)

                if not args.label:
                    split = tile_image_from_file(path)
                if args.label:
                    split = tile_label_from_file(path)
                    split = split.reshape((args.ts, args.ts, 1))  # H,W -> H,W,C

                assert image.shape == split.shape
                image[:, :, :] += split[:, :, :]

            if not args.label and is_border(image):
                progress.update()
                return

            tile = mercantile.Tile(x=x, y=y, z=z)

            if not args.label:
                ret = tile_image_to_file(args.out, tile, image)

            if args.label:
                ret = tile_label_to_file(args.out, tile, palette, image)

            if not ret:
                sys.exit("Error: Unable to write tile {}.".format(str(tile_key)))

            progress.update()
            return tile

        for tiled in executor.map(worker, tiles_map.keys()):
            if tiled is not None:
                tiles.append(tiled)

        if splits_path and os.path.isdir(splits_path):
            shutil.rmtree(splits_path)  # Delete suffixes dir if any

    if not args.no_web_ui:
        template = "leaflet.html" if not args.web_ui_template else args.web_ui_template
        base_url = args.web_ui_base_url if args.web_ui_base_url else "./"
        web_ui(args.out, base_url, tiles, tiles, ext, template)
コード例 #6
0
ファイル: predict.py プロジェクト: ajijohn/robosat.pink
def main(args):
    config = load_config(args.config)
    num_classes = len(config["classes"])
    batch_size = args.batch_size if args.batch_size else config["model"]["batch_size"]
    tile_size = config["model"]["tile_size"]

    if torch.cuda.is_available():
        device = torch.device("cuda")
        torch.backends.cudnn.benchmark = True
    else:
        device = torch.device("cpu")

    def map_location(storage, _):
        return storage.cuda() if torch.cuda.is_available() else storage.cpu()

    # check checkpoint situation  + load if ncessary
    chkpt = None # no checkpoint
    if args.checkpoint: # command line checkpoint
        chkpt = args.checkpoint
    else:
        try: # config file checkpoint
            chkpt = config["checkpoint"]['path']
        except:
            # no checkpoint in config file
            pass

    S3_CHECKPOINT = False
    if chkpt.startswith("s3://"):
        S3_CHECKPOINT = True
        # load from s3
        chkpt = chkpt[5:]

    models = [name for _, name, _ in pkgutil.iter_modules([os.path.dirname(robosat_pink.models.__file__)])]
    if config["model"]["name"] not in [model for model in models]:
        sys.exit("Unknown model, thoses available are {}".format([model for model in models]))

    num_channels = 0
    for channel in config["channels"]:
        num_channels += len(channel["bands"])

    pretrained = config["model"]["pretrained"]
    encoder = config["model"]["encoder"]

    model_module = import_module("robosat_pink.models.{}".format(config["model"]["name"]))

    net = getattr(model_module, "{}".format(config["model"]["name"].title()))(
        num_classes=num_classes, num_channels=num_channels, encoder=encoder, pretrained=pretrained
    ).to(device)

    net = torch.nn.DataParallel(net)


    try:
        if S3_CHECKPOINT:
            sess = boto3.Session(profile_name=args.aws_profile)
            fs = s3fs.S3FileSystem(session=sess)
            with s3fs.S3File(fs, chkpt, 'rb') as C:
                state = torch.load(io.BytesIO(C.read()), map_location = map_location)
        else:
            state = torch.load(chkpt, map_location= map_location)
        net.load_state_dict(state['state_dict'], strict=False)
        net.to(device)
    except FileNotFoundError as f:
        print("{} checkpoint not found.".format(chkpt))


    net.eval()

    tile_ids_filter = None
    if args.tile_ids is not None:
        tile_ids_filter = pd.read_csv(args.tile_ids, names=['ids']).ids.values



    ## Construct torch Dataset, either from single directory (if args.tiles is given) or from config. Used --tile_ids argument
    ## to determine how to filter resulting tiles (e.g. to only run prediction on a test set)
    if args.tiles is not None:
        imagery_locs = [args.tiles]
        # use tiledir  provided
        if args.tiles.startswith('s3://'):
            allImageryDatasets = [S3SlippyMapTiles(args.tiles, mode='multibands', transform=None, aws_profile = args.aws_profile, ids = tile_ids_filter, buffered=args.buffer, buffered_overlap=args.buffer_overlap, tilesize=tile_size, bands=num_channels)]
        else:
            allImageryDatasets = [SlippyMapTiles(args.tiles, mode="multibands", transform = None)]
        # directory = BufferedSlippyMapDirectory(args.tiles, transform=transform, size=tile_size,re overlap=args.overlap)
    else: # use config to search for tiles
        fs = s3fs.S3FileSystem(session = boto3.Session(profile_name = config['dataset']['aws_profile']))
        p = pprint.PrettyPrinter()
        imagery_searchpath = config['dataset']['image_bucket']  + '/' +  config['dataset']['imagery_directory_regex']
        print("Searching for imagery...({})".format(imagery_searchpath))
        imagery_candidates = fs.ls(config['dataset']['image_bucket'])
        print("candidates:")
        p.pprint(imagery_candidates)
        imagery_locs = [c for c in imagery_candidates if match(imagery_searchpath, c)]
        print("result:")
        p.pprint(imagery_locs)

        allImageryDatasets = [
            S3SlippyMapTiles("s3://" +  loc, mode='multibands', transform=None, aws_profile=args.aws_profile, ids=tile_ids_filter)
            for loc in imagery_locs
        ]


    palette = make_palette(config["classes"][0]["color"])


    # don't track tensors with autograd during prediction
    with torch.no_grad():
        for dataset, imageloc in zip(allImageryDatasets, imagery_locs):
            print("Prediction: {}".format(imageloc))
            imageloc_path = imageloc.replace("/", ":") # to not recreate directory structure when saving
            loader = DataLoader(dataset, batch_size=batch_size, num_workers=args.workers)
            for tiles, images in tqdm(loader, desc="Eval", unit="batch", ascii=True):
                tiles = list(zip(tiles[0], tiles[1], tiles[2]))
                images = images.to(device)
                outputs = net(images)


                for i, (tile, prob) in enumerate(zip(tiles, outputs)):
                    tile = Tile(tile[0].item(), tile[1].item(), tile[2].item())
                    savedir = args.preds

                    # manually compute segmentation mask class probabilities per pixel
                    image = (prob > args.threshold).cpu().numpy().astype(np.uint8)

                    if args.buffer:
                        image = allImageryDatasets[0].unbuffer(image)

                    image = image.squeeze()
                    
                    _write_png(tile, image, os.path.join(savedir, imageloc_path), palette)

                    if(args.create_tif):
                        _write_tif(tile, image, os.path.join(savedir, imageloc_path))
コード例 #7
0
ファイル: rasterize.py プロジェクト: yzuaiyou/robosat.pink
def main(args):

    if (args.geojson and args.postgis) or (not args.geojson
                                           and not args.postgis):
        sys.exit(
            "ERROR: Input features to rasterize must be either GeoJSON or PostGIS"
        )

    if args.postgis and not args.pg_dsn:
        sys.exit(
            "ERROR: With PostGIS input features, --pg_dsn must be provided")

    config = load_config(args.config)
    check_classes(config)
    palette = make_palette(*[classe["color"] for classe in config["classes"]],
                           complementary=True)
    burn_value = 1

    args.out = os.path.expanduser(args.out)
    os.makedirs(args.out, exist_ok=True)
    log = Logs(os.path.join(args.out, "log"), out=sys.stderr)

    def geojson_parse_polygon(zoom, srid, feature_map, polygon, i):

        try:
            if srid != 4326:
                polygon = [
                    xy for xy in geojson_reproject(
                        {
                            "type": "feature",
                            "geometry": polygon
                        }, srid, 4326)
                ][0]

            for i, ring in enumerate(
                    polygon["coordinates"]
            ):  # GeoJSON coordinates could be N dimensionals
                polygon["coordinates"][i] = [[
                    x, y
                ] for point in ring for x, y in zip([point[0]], [point[1]])]

            if polygon["coordinates"]:
                for tile in burntiles.burn([{
                        "type": "feature",
                        "geometry": polygon
                }],
                                           zoom=zoom):
                    feature_map[mercantile.Tile(*tile)].append({
                        "type":
                        "feature",
                        "geometry":
                        polygon
                    })

        except ValueError:
            log.log("Warning: invalid feature {}, skipping".format(i))

        return feature_map

    def geojson_parse_geometry(zoom, srid, feature_map, geometry, i):

        if geometry["type"] == "Polygon":
            feature_map = geojson_parse_polygon(zoom, srid, feature_map,
                                                geometry, i)

        elif geometry["type"] == "MultiPolygon":
            for polygon in geometry["coordinates"]:
                feature_map = geojson_parse_polygon(zoom, srid, feature_map, {
                    "type": "Polygon",
                    "coordinates": polygon
                }, i)
        else:
            log.log(
                "Notice: {} is a non surfacic geometry type, skipping feature {}"
                .format(geometry["type"], i))

        return feature_map

    if args.geojson:

        try:
            tiles = [
                tile for tile in tiles_from_csv(os.path.expanduser(args.cover))
            ]
            zoom = tiles[0].z
            assert not [tile for tile in tiles if tile.z != zoom]
        except:
            sys.exit("ERROR: Inconsistent cover {}".format(args.cover))

        feature_map = collections.defaultdict(list)

        log.log("RoboSat.pink - rasterize - Compute spatial index")
        for geojson_file in args.geojson:

            with open(os.path.expanduser(geojson_file)) as geojson:
                try:
                    feature_collection = json.load(geojson)
                except:
                    sys.exit("ERROR: {} is not a valid JSON file.".format(
                        geojson_file))

                try:
                    crs_mapping = {"CRS84": "4326", "900913": "3857"}
                    srid = feature_collection["crs"]["properties"][
                        "name"].split(":")[-1]
                    srid = int(srid) if srid not in crs_mapping else int(
                        crs_mapping[srid])
                except:
                    srid = int(4326)

                for i, feature in enumerate(
                        tqdm(feature_collection["features"],
                             ascii=True,
                             unit="feature")):

                    try:
                        if feature["geometry"]["type"] == "GeometryCollection":
                            for geometry in feature["geometry"]["geometries"]:
                                feature_map = geojson_parse_geometry(
                                    zoom, srid, feature_map, geometry, i)
                        else:
                            feature_map = geojson_parse_geometry(
                                zoom, srid, feature_map, feature["geometry"],
                                i)
                    except:
                        sys.exit(
                            "ERROR: Unable to parse {} file. Seems not a valid GEOJSON file."
                            .format(geojson_file))

        log.log(
            "RoboSat.pink - rasterize - rasterizing tiles from {} on cover {}".
            format(args.geojson, args.cover))
        with open(os.path.join(os.path.expanduser(args.out),
                               "instances.cover"),
                  mode="w") as cover:
            for tile in tqdm(list(
                    tiles_from_csv(os.path.expanduser(args.cover))),
                             ascii=True,
                             unit="tile"):

                try:
                    if tile in feature_map:
                        cover.write("{},{},{}  {}{}".format(
                            tile.x, tile.y, tile.z, len(feature_map[tile]),
                            os.linesep))
                        out = geojson_tile_burn(tile, feature_map[tile], 4326,
                                                args.ts, burn_value)
                    else:
                        cover.write("{},{},{}  {}{}".format(
                            tile.x, tile.y, tile.z, 0, os.linesep))
                        out = np.zeros(shape=(args.ts, args.ts),
                                       dtype=np.uint8)

                    tile_label_to_file(args.out, tile, palette, out)
                except:
                    log.log("Warning: Unable to rasterize tile. Skipping {}".
                            format(str(tile)))

    if args.postgis:

        try:
            pg_conn = psycopg2.connect(args.pg_dsn)
            pg = pg_conn.cursor()
        except Exception:
            sys.exit("Unable to connect PostgreSQL: {}".format(args.pg_dsn))

        log.log(
            "RoboSat.pink - rasterize - rasterizing tiles from PostGIS on cover {}"
            .format(args.cover))
        log.log(" SQL {}".format(args.postgis))
        try:
            pg.execute(
                "SELECT ST_Srid(geom) AS srid FROM ({} LIMIT 1) AS sub".format(
                    args.postgis))
            srid = pg.fetchone()[0]
        except Exception:
            sys.exit("Unable to retrieve geometry SRID.")

        for tile in tqdm(list(tiles_from_csv(args.cover)),
                         ascii=True,
                         unit="tile"):

            s, w, e, n = mercantile.bounds(tile)
            raster = np.zeros((args.ts, args.ts))

            query = """
WITH
     bbox      AS (SELECT ST_Transform(ST_MakeEnvelope({},{},{},{}, 4326), {}  ) AS bbox),
     bbox_merc AS (SELECT ST_Transform(ST_MakeEnvelope({},{},{},{}, 4326), 3857) AS bbox),

     rast_a    AS (SELECT ST_AddBand(
                           ST_SetSRID(
                             ST_MakeEmptyRaster({}, {}, ST_Xmin(bbox), ST_Ymax(bbox), (ST_YMax(bbox) - ST_YMin(bbox)) / {}),
                           3857),
                          '8BUI'::text, 0) AS rast
                   FROM bbox_merc),

     features  AS (SELECT ST_Union(ST_Transform(ST_Force2D(geom), 3857)) AS geom
                   FROM ({}) AS sub, bbox
                   WHERE ST_Intersects(geom, bbox)),

     rast_b    AS (SELECT ST_AsRaster(geom, rast, '8BUI', {}) AS rast
                   FROM features, rast_a
                   WHERE NOT ST_IsEmpty(geom))

SELECT ST_AsBinary(ST_MapAlgebra(rast_a.rast, rast_b.rast, '{}', NULL, 'FIRST')) AS wkb FROM rast_a, rast_b

""".format(s, w, e, n, srid, s, w, e, n, args.ts, args.ts, args.ts,
            args.postgis, burn_value, burn_value)

            try:
                pg.execute(query)
                row = pg.fetchone()
                if row:
                    raster = np.squeeze(wkb_to_numpy(io.BytesIO(row[0])),
                                        axis=2)

            except Exception:
                log.log(
                    "Warning: Invalid geometries, skipping {}".format(tile))
                pg_conn = psycopg2.connect(args.pg_dsn)
                pg = pg_conn.cursor()

            try:
                tile_label_to_file(args.out, tile, palette, raster)
            except:
                log.log(
                    "Warning: Unable to rasterize tile. Skipping {}".format(
                        str(tile)))

    if not args.no_web_ui:
        template = "leaflet.html" if not args.web_ui_template else args.web_ui_template
        base_url = args.web_ui_base_url if args.web_ui_base_url else "./"
        tiles = [tile for tile in tiles_from_csv(args.cover)]
        web_ui(args.out, base_url, tiles, tiles, "png", template)
コード例 #8
0
def main(args):

    config = load_config(args.config)
    colors = [classe["color"] for classe in config["classes"]]
    tile_size = args.tile_size

    try:
        raster = rasterio_open(args.raster)
        w, s, e, n = bounds = transform_bounds(raster.crs, "EPSG:4326",
                                               *raster.bounds)
        transform, _, _ = calculate_default_transform(raster.crs, "EPSG:3857",
                                                      raster.width,
                                                      raster.height, *bounds)
    except:
        sys.exit("Error: Unable to load raster or deal with it's projection")

    tiles = [
        mercantile.Tile(x=x, y=y, z=z)
        for x, y, z in mercantile.tiles(w, s, e, n, args.zoom)
    ]
    tiles_nodata = []

    for tile in tqdm(tiles, desc="Tiling", unit="tile", ascii=True):

        w, s, e, n = tile_bounds = mercantile.xy_bounds(tile)

        # Inspired by Rio-Tiler, cf: https://github.com/mapbox/rio-tiler/pull/45
        warp_vrt = WarpedVRT(
            raster,
            crs="EPSG:3857",
            resampling=Resampling.bilinear,
            add_alpha=False,
            transform=from_bounds(*tile_bounds, args.size, args.size),
            width=math.ceil((e - w) / transform.a),
            height=math.ceil((s - n) / transform.e),
        )
        data = warp_vrt.read(out_shape=(len(raster.indexes), tile_size,
                                        tile_size),
                             window=warp_vrt.window(w, s, e, n))

        # If no_data is set, remove all tiles with at least one whole border filled only with no_data (on all bands)
        if type(args.no_data) is not None and (
                np.all(data[:, 0, :] == args.no_data)
                or np.all(data[:, -1, :] == args.no_data)
                or np.all(data[:, :, 0] == args.no_data)
                or np.all(data[:, :, -1] == args.no_data)):
            tiles_nodata.append(tile)
            continue

        C, W, H = data.shape

        os.makedirs(os.path.join(args.out, str(args.zoom), str(tile.x)),
                    exist_ok=True)
        path = os.path.join(args.out, str(args.zoom), str(tile.x), str(tile.y))

        if args.type == "label":
            assert C == 1, "Error: Label raster input should be 1 band"

            ext = "png"
            img = Image.fromarray(np.squeeze(data, axis=0), mode="P")
            img.putpalette(make_palette(colors[0], colors[1]))
            img.save("{}.{}".format(path, ext), optimize=True)

        elif args.type == "image":
            assert C == 1 or C == 3, "Error: Image raster input should be either 1 or 3 bands"

            # GeoTiff could be 16 or 32bits
            if data.dtype == "uint16":
                data = np.uint8(data / 256)
            elif data.dtype == "uint32":
                data = np.uint8(data / (256 * 256))

            if C == 1:
                ext = "png"
                Image.fromarray(np.squeeze(data, axis=0),
                                mode="L").save("{}.{}".format(path, ext),
                                               optimize=True)
            elif C == 3:
                ext = "webp"
                Image.fromarray(np.moveaxis(data, 0, 2),
                                mode="RGB").save("{}.{}".format(path, ext),
                                                 optimize=True)

    if args.web_ui:
        template = "leaflet.html" if not args.web_ui_template else args.web_ui_template
        tiles = [tile for tile in tiles if tile not in tiles_nodata]
        base_url = args.web_ui_base_url if args.web_ui_base_url else "./"
        web_ui(args.out, base_url, tiles, tiles, ext, template)
コード例 #9
0
def main(args):
    config = load_config(args.config)
    tile_size = args.tile_size if args.tile_size else config["model"]["tile_size"]
    colors = [classe["color"] for classe in config["classes"]]

    os.makedirs(args.out, exist_ok=True)

    # We can only rasterize all tiles at a single zoom.
    assert all(tile.z == args.zoom for tile in tiles_from_csv(args.cover))

    # Find all tiles the features cover and make a map object for quick lookup.
    feature_map = collections.defaultdict(list)
    log = Logs(os.path.join(args.out, "log"), out=sys.stderr)

    def parse_polygon(feature_map, polygon, i):

        try:
            for i, ring in enumerate(polygon["coordinates"]):  # GeoJSON coordinates could be N dimensionals
                polygon["coordinates"][i] = [[x, y] for point in ring for x, y in zip([point[0]], [point[1]])]

            for tile in burntiles.burn([{"type": "feature", "geometry": polygon}], zoom=args.zoom):
                feature_map[mercantile.Tile(*tile)].append({"type": "feature", "geometry": polygon})

        except ValueError:
            log.log("Warning: invalid feature {}, skipping".format(i))

        return feature_map

    def parse_geometry(feature_map, geometry, i):

        if geometry["type"] == "Polygon":
            feature_map = parse_polygon(feature_map, geometry, i)

        elif geometry["type"] == "MultiPolygon":
            for polygon in geometry["coordinates"]:
                feature_map = parse_polygon(feature_map, {"type": "Polygon", "coordinates": polygon}, i)
        else:
            log.log("Notice: {} is a non surfacic geometry type, skipping feature {}".format(geometry["type"], i))

        return feature_map

    for feature in args.features:
        with open(feature) as f:
            fc = json.load(f)
            for i, feature in enumerate(tqdm(fc["features"], ascii=True, unit="feature")):

                if feature["geometry"]["type"] == "GeometryCollection":
                    for geometry in feature["geometry"]["geometries"]:
                        feature_map = parse_geometry(feature_map, geometry, i)
                else:
                    feature_map = parse_geometry(feature_map, feature["geometry"], i)

    # Burn features to tiles and write to a slippy map directory.
    for tile in tqdm(list(tiles_from_csv(args.cover)), ascii=True, unit="tile"):
        if tile in feature_map:
            out = burn(tile, feature_map[tile], tile_size)
        else:
            out = np.zeros(shape=(tile_size, tile_size), dtype=np.uint8)

        out_dir = os.path.join(args.out, str(tile.z), str(tile.x))
        os.makedirs(out_dir, exist_ok=True)

        out_path = os.path.join(out_dir, "{}.png".format(tile.y))

        if os.path.exists(out_path):
            prev = np.array(Image.open(out_path))
            out = np.maximum(out, prev)

        out = Image.fromarray(out, mode="P")

        out_path = os.path.join(args.out, str(tile.z), str(tile.x))
        os.makedirs(out_path, exist_ok=True)

        out.putpalette(complementary_palette(make_palette(colors[0], colors[1])))
        out.save(os.path.join(out_path, "{}.png".format(tile.y)), optimize=True)

    if args.web_ui:
        template = "leaflet.html" if not args.web_ui_template else args.web_ui_template
        base_url = args.web_ui_base_url if args.web_ui_base_url else "./"
        tiles = [tile for tile in tiles_from_csv(args.cover)]
        web_ui(args.out, base_url, tiles, tiles, "png", template)
コード例 #10
0
ファイル: predict.py プロジェクト: yzuaiyou/robosat.pink
def main(args):
    config = load_config(args.config)
    check_channels(config)
    check_classes(config)
    args.workers = torch.cuda.device_count() * 2 if torch.device(
        "cuda") and not args.workers else args.workers

    log = Logs(os.path.join(args.out, "log"))

    if torch.cuda.is_available():
        log.log("RoboSat.pink - predict on {} GPUs, with {} workers".format(
            torch.cuda.device_count(), args.workers))
        log.log("(Torch:{} Cuda:{} CudNN:{})".format(
            torch.__version__, torch.version.cuda,
            torch.backends.cudnn.version()))
        device = torch.device("cuda")
        torch.backends.cudnn.benchmark = True
    else:
        log.log("RoboSat.pink - predict on CPU, with {} workers".format(
            args.workers))
        device = torch.device("cpu")

    try:
        chkpt = torch.load(args.checkpoint, map_location=device)
        assert chkpt["producer_name"] == "RoboSat.pink"
        model_module = import_module("robosat_pink.models.{}".format(
            chkpt["nn"].lower()))
        nn = getattr(model_module, chkpt["nn"])(chkpt["shape_in"],
                                                chkpt["shape_out"]).to(device)
        nn = torch.nn.DataParallel(nn)
        nn.load_state_dict(chkpt["state_dict"])
        nn.eval()
    except:
        sys.exit("ERROR: Unable to load {} checkpoint.".format(
            args.checkpoint))

    log.log("Model {} - UUID: {}".format(chkpt["nn"], chkpt["uuid"]))

    try:
        loader_module = import_module("robosat_pink.loaders.{}".format(
            chkpt["loader"].lower()))
        loader_predict = getattr(loader_module,
                                 chkpt["loader"])(config,
                                                  chkpt["shape_in"][1:3],
                                                  args.tiles,
                                                  mode="predict")
    except:
        sys.exit("ERROR: Unable to load {} data loader.".format(
            chkpt["loader"]))

    loader = DataLoader(loader_predict,
                        batch_size=args.bs,
                        num_workers=args.workers)
    palette = make_palette(config["classes"][0]["color"],
                           config["classes"][1]["color"])

    with torch.no_grad(
    ):  # don't track tensors with autograd during prediction

        for images, tiles in tqdm(loader,
                                  desc="Eval",
                                  unit="batch",
                                  ascii=True):

            images = images.to(device)

            try:
                outputs = nn(images)
                probs = torch.nn.functional.softmax(outputs,
                                                    dim=1).data.cpu().numpy()
            except:
                log.log("WARNING: Skipping batch:")
                for tile, prob in zip(tiles, probs):
                    log.log(" - {}".format(str(tile)))
                continue

            for tile, prob in zip(tiles, probs):

                try:
                    x, y, z = list(map(int, tile))
                    mask = np.around(prob[1:, :, :]).astype(np.uint8).squeeze()
                    tile_label_to_file(args.out, mercantile.Tile(x, y, z),
                                       palette, mask)
                except:
                    log.log("WARNING: Skipping tile {}".format(str(tile)))

    if not args.no_web_ui:
        template = "leaflet.html" if not args.web_ui_template else args.web_ui_template
        base_url = args.web_ui_base_url if args.web_ui_base_url else "./"
        tiles = [tile for tile, _ in tiles_from_slippy_map(args.out)]
        web_ui(args.out, base_url, tiles, tiles, "png", template)