コード例 #1
0
def mapDatasets(sources):
    maps = [[] for x in range(3)]
    maps[1].append("background")
    sources = sorted(sources)
    for source in sources:
        if source == PASCAL:
            mapPASCAL(maps, source)
        elif source == COCO:
            mapCOCO(maps, source)

    maps[0] = [(idx, ) + _map for idx, _map in enumerate(maps[0])]
    paths = [PATH.DATA.IMG_MAP, PATH.DATA.CLS_MAP, PATH.DATA.IMG_CLS_MAP]
    for _map, _path in zip(maps, paths):
        saveObject(_map, _path)
    return maps
コード例 #2
0
    def getFieldmaps(self, file_path=None):
        if self.field_maps is not None:
            return self.field_maps

        # load/generate field maps
        file_path = PATH.MODEL.FIELDMAPS if file_path is None else file_path
        if os.path.isfile(file_path):
            print ("Fieldmaps: loading from the stored object file ...")
            field_maps = loadObject(file_path)
        else:
            print ("Fieldmaps: generating ...")
            field_maps = stackedFieldmaps(self.model)
            saveObject(field_maps, file_path)
            print ("Fieldmaps: saved at {}".format(file_path))
        self.field_maps = field_maps
        return self.field_maps
コード例 #3
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 def _finish(self):
     if not exists(PATH.DATA.CLS_MAP):
         print("Class map: saved.")
         saveObject(class_map, PATH.DATA.CLS_MAP)
     if not exists(PATH.DATA.IMG_CLS_MAP):
         print("Image class map: saved")
         saveObject(img_cls_map, PATH.DATA.IMG_CLS_MAP)
     if DESCRIBE_DATA:
         print("Data statistics: saved")
         saveObject(des, PATH.DATA.STATISTICS.DATA)
         saveObject(sortAsClass(des), PATH.DATA.STATISTICS.REPORT)
コード例 #4
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def mapImageNet(maps=None):
    if maps:
        img_ids, _, img_cls_map = maps
    else:
        img_ids = loadObject(PATH.DATA.IMG_MAP)
        img_cls_map = loadObject(PATH.DATA.IMG_CLS_MAP)

    img_dir = PATH.DATA.IMAGENET.IMGS
    data = getFilesInDirectory(img_dir, "jpg")
    data = [(x[x.rfind('/') + 1:-4], IMAGENET) for x in data]

    idx = len(img_ids)
    for _data in data:
        img_ids.append((idx, ) + _data)
        img_id = _data[0]
        cls = getClassID(img_id.split('_')[0])
        img_cls_map.append([img_id, cls])
        idx += 1

    saveObject(img_ids, PATH.DATA.IMG_MAP)
    saveObject(img_cls_map, PATH.DATA.IMG_CLS_MAP)
コード例 #5
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def reportMatchResults(matches):
    print("Report Matches: begin...")
    iou_thres = CONFIG.DIS.IOU_THRESHOLD
    top = CONFIG.DIS.TOP
    file_path = PATH.OUT.UNIT_MATCHES
    saveObject(matches, file_path)
    unit_matches = filterMatches(matches, top, iou_thres)

    concept_matches = rearrangeMatches(matches)
    file_path = PATH.OUT.CONCEPT_MATCHES
    saveObject(concept_matches, file_path)
    concept_matches = filterMatches(concept_matches, top, iou_thres)
    print("Report Matches: filtering finished.")

    if CONFIG.DIS.REPORT_TEXT:
        file_path = PATH.OUT.UNIT_MATCH_REPORT
        reportMatchesInText(unit_matches, file_path, "unit")
        file_path = PATH.OUT.CONCEPT_MATCH_REPORT
        reportMatchesInText(concept_matches, file_path, "concept")
    print("Report Matches: saved")

    if CONFIG.DIS.REPORT_FIGURE:
        reportMatchesInFigure(unit_matches)
コード例 #6
0
        cls_layers = model.getLayers()[-2:]
        probe_layers += cls_layers
        
        data = {}
        while bl:
            batch = bl.nextBatch()
            imgs = batch[1]
    
            activ_maps = model.getActivMaps(imgs, probe_layers)
            conv_activs, cls_activs = splitDic(activ_maps, cls_layers)
            conv_attrs = activAttrs(conv_activs)
            
            integrate(data, {**conv_attrs, **cls_activs})
            bl.reportProgress()
        data = {k : np.asarray(v) for k, v in data.items()}
        saveObject(data, data_path)
        
    print ("Correlation: analysis begin")
    #split activation attributes series
    # conv_attrs, cls_attrs = splitDic(data, ["prob", "fc8"])
    # conv_attrs = splitAttr(conv_attrs)
    # for attr_idx, attr_name in zip(conv_attrs, ATTRS):
    #     _attrs = {**conv_attrs[attr_idx], **cls_attrs}
    #     corrs = {}
    #     for unit_1, unit_2 in paired(_attrs):
    #         name = "{}-{}".format(unit_1, unit_2)

    #         x = _attrs[unit_1]
    #         y = _attrs[unit_2]
    #         coef, _ = correlation(x, y)
    #         if unit_1 not in corrs:
コード例 #7
0
ファイル: verifier.py プロジェクト: TreeLLi/inner-detectors
                anno_ids = patch_data[1][:input_num]
                activ_maps_p = model.getActivMaps(imgs, probe_layers)
                activ_attrs_p = activAttrs(activ_maps_p)
                patch_data = [
                    _patch_data[input_num:] for _patch_data in patch_data
                ]

                updateActivAttrDiffs(attr_diffs,
                                     activ_attrs_p,
                                     anno_ids,
                                     patched=True)

            bl.reportProgress()

        attr_change_aves, attr_changes = computeAttrChange(attr_diffs)
        saveObject(attr_changes, data_path)
    else:
        print("Find existing verification data, beginning analysis.")
        attr_changes = loadObject(data_path)

    # analysis for assessing if identification results correct
    concept_matches = loadObject(PATH.OUT.IDE.DATA.CONCEPT)
    data_x = {}
    data_y = {}
    for ccp, unit, match in nested(concept_matches, depth=2):
        try:
            mean_change = attr_changes[unit][ccp][0]
            if not np.isfinite(mean_change):
                continue

            if ccp not in data_x:
コード例 #8
0
            batch = bl.nextBatch()
            imgs = batch[1]
            annos = batch[2]

            activ_maps = model.getActivMaps(imgs, probe_layers)
            activ_maps = splitDict(activ_maps, num)
            params = [(amap, field_maps, annos, quans) for amap in activ_maps]
            with Pool() as pool:
                batch_matches = pool.starmap(process, params)
            print ("Combine matches...")
            for batch_match in batch_matches:
                for idx, bm in enumerate(batch_match):
                    matches[idx] = combineMatches(matches[idx], bm)
            bl.reportProgress()
            
        saveObject(matches, file_path)
    else:
        matches = loadObject(file_path)
        print("Find existing match results, thus skipping to analyse results.")

    # match results analysis
    # overall comparison
    # with Pool() as pool:
    #     means = pool.starmap(dictMean, [(m, 0) for m in matches])
    # labels = {'x' : 'quantile', 'y' : 'mean IoU'}
    # plt = plotFigure(quans, means, title="means v.s. quantiles", show=True)
    
    # saveFigure(plt, os.path.join(plot_path, "overall.png"))

    plot_path = os.path.join(PATH.OUT.ROOT, "activ_thres")
    # sort and comparison