Esempio n. 1
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def pointing_correction(tile, i):
    """
    Compute the translation that corrects the pointing error on a pair of tiles.

    Args:
        tile: dictionary containing the information needed to process the tile
        i: index of the processed pair
    """
    x, y, w, h = tile['coordinates']
    out_dir = os.path.join(tile['dir'], 'pair_{}'.format(i))
    img1 = cfg['images'][0]['img']
    rpc1 = cfg['images'][0]['rpcm']
    img2 = cfg['images'][i]['img']
    rpc2 = cfg['images'][i]['rpcm']

    # correct pointing error
    print('correcting pointing on tile {} {} pair {}...'.format(x, y, i))
    method = 'relative' if cfg[
        'relative_sift_match_thresh'] is True else 'absolute'
    A, m = pointing_accuracy.compute_correction(img1, img2, rpc1, rpc2, x, y,
                                                w, h, method,
                                                cfg['sift_match_thresh'],
                                                cfg['max_pointing_error'])

    if A is not None:  # A is the correction matrix
        np.savetxt(os.path.join(out_dir, 'pointing.txt'), A, fmt='%6.3f')
    if m is not None:  # m is the list of sift matches
        np.savetxt(os.path.join(out_dir, 'sift_matches.txt'), m, fmt='%9.3f')
        np.savetxt(os.path.join(out_dir, 'center_keypts_sec.txt'),
                   np.mean(m[:, 2:], 0),
                   fmt='%9.3f')
        if cfg['debug']:
            visualisation.plot_matches(
                img1, img2, rpc1, rpc2, m,
                os.path.join(out_dir, 'sift_matches_pointing.png'), x, y, w, h)
Esempio n. 2
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def pointing_correction(tile, i):
    """
    Compute the translation that corrects the pointing error on a pair of tiles.

    Args:
        tile: dictionary containing the information needed to process the tile
        i: index of the processed pair
    """
    x, y, w, h = tile['coordinates']
    out_dir = os.path.join(tile['dir'], 'pair_{}'.format(i))
    img1 = cfg['images'][0]['img']
    rpc1 = cfg['images'][0]['rpc']
    img2 = cfg['images'][i]['img']
    rpc2 = cfg['images'][i]['rpc']

    # correct pointing error
    print('correcting pointing on tile {} {} pair {}...'.format(x, y, i))
    try:
        A, m = pointing_accuracy.compute_correction(img1, rpc1, img2, rpc2, x,
                                                    y, w, h)
    except common.RunFailure as e:
        stderr = os.path.join(out_dir, 'stderr.log')
        with open(stderr, 'w') as f:
            f.write('ERROR during pointing correction with cmd: %s\n' %
                    e[0]['command'])
            f.write('Stop processing this pair\n')
        return

    if A is not None:  # A is the correction matrix
        np.savetxt(os.path.join(out_dir, 'pointing.txt'), A, fmt='%6.3f')
    if m is not None:  # m is the list of sift matches
        np.savetxt(os.path.join(out_dir, 'sift_matches.txt'), m, fmt='%9.3f')
        np.savetxt(os.path.join(out_dir, 'center_keypts_sec.txt'),
                   np.mean(m[:, 2:], 0),
                   fmt='%9.3f')
        if cfg['debug']:
            visualisation.plot_matches(
                img1, img2, rpc1, rpc2, m, x, y, w, h,
                os.path.join(out_dir, 'sift_matches_pointing.png'))
Esempio n. 3
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def rectify_pair(im1,
                 im2,
                 rpc1,
                 rpc2,
                 x,
                 y,
                 w,
                 h,
                 out1,
                 out2,
                 A=None,
                 sift_matches=None,
                 method='rpc',
                 hmargin=0,
                 vmargin=0):
    """
    Rectify a ROI in a pair of images.

    Args:
        im1, im2: paths to two GeoTIFF image files
        rpc1, rpc2: two instances of the rpcm.RPCModel class
        x, y, w, h: four integers defining the rectangular ROI in the first
            image.  (x, y) is the top-left corner, and (w, h) are the dimensions
            of the rectangle.
        out1, out2: paths to the output rectified crops
        A (optional): 3x3 numpy array containing the pointing error correction
            for im2. This matrix is usually estimated with the pointing_accuracy
            module.
        sift_matches (optional): Nx4 numpy array containing a list of sift
            matches, in the full image coordinates frame
        method (default: 'rpc'): option to decide wether to use rpc of sift
            matches for the fundamental matrix estimation.
        {h,v}margin (optional): horizontal and vertical margins added on the
            sides of the rectified images

    Returns:
        H1, H2: Two 3x3 matrices representing the rectifying homographies that
        have been applied to the two original (large) images.
        disp_min, disp_max: horizontal disparity range
    """
    # compute real or virtual matches
    if method == 'rpc':
        # find virtual matches from RPC camera models
        matches = rpc_utils.matches_from_rpc(rpc1, rpc2, x, y, w, h,
                                             cfg['n_gcp_per_axis'])

        # correct second image coordinates with the pointing correction matrix
        if A is not None:
            matches[:, 2:] = common.points_apply_homography(
                np.linalg.inv(A), matches[:, 2:])
    elif method == 'sift':
        matches = sift_matches

    else:
        raise Exception(
            "Unknown value {} for argument 'method'".format(method))

    if matches is None or len(matches) < 4:
        raise NoRectificationMatchesError(
            "No or not enough matches found to rectify image pair")

    # compute rectifying homographies
    H1, H2, F = rectification_homographies(matches, x, y, w, h)

    if cfg['register_with_shear']:
        # compose H2 with a horizontal shear to reduce the disparity range
        a = np.mean(rpc_utils.altitude_range(rpc1, x, y, w, h))
        lon, lat, alt = rpc_utils.ground_control_points(
            rpc1, x, y, w, h, a, a, 4)
        x1, y1 = rpc1.projection(lon, lat, alt)[:2]
        x2, y2 = rpc2.projection(lon, lat, alt)[:2]
        m = np.vstack([x1, y1, x2, y2]).T
        m = np.vstack({tuple(row)
                       for row in m})  # remove duplicates due to no alt range
        H2 = register_horizontally_shear(m, H1, H2)

    # compose H2 with a horizontal translation to center disp range around 0
    if sift_matches is not None:
        sift_matches = filter_matches_epipolar_constraint(
            F, sift_matches, cfg['epipolar_thresh'])
        if len(sift_matches) < 1:
            warnings.warn(
                "Need at least one sift match for the horizontal registration",
                category=NoHorizontalRegistrationWarning,
            )
        else:
            H2 = register_horizontally_translation(sift_matches, H1, H2)

    # compute disparity range
    if cfg['debug']:
        out_dir = os.path.dirname(out1)
        np.savetxt(os.path.join(out_dir, 'sift_matches_disp.txt'),
                   sift_matches,
                   fmt='%9.3f')
        visualisation.plot_matches(
            im1, im2, rpc1, rpc2, sift_matches, x, y, w, h,
            os.path.join(out_dir, 'sift_matches_disp.png'))
    disp_m, disp_M = disparity_range(rpc1, rpc2, x, y, w, h, H1, H2,
                                     sift_matches, A)

    # recompute hmargin and homographies
    hmargin = int(np.ceil(max([hmargin, np.fabs(disp_m), np.fabs(disp_M)])))
    T = common.matrix_translation(hmargin, vmargin)
    H1, H2 = np.dot(T, H1), np.dot(T, H2)

    # compute output images size
    roi = [[x, y], [x + w, y], [x + w, y + h], [x, y + h]]
    pts1 = common.points_apply_homography(H1, roi)
    x0, y0, w0, h0 = common.bounding_box2D(pts1)
    # check that the first homography maps the ROI in the positive quadrant
    np.testing.assert_allclose(np.round([x0, y0]), [hmargin, vmargin],
                               atol=.01)

    # apply homographies and do the crops
    common.image_apply_homography(out1, im1, H1, w0 + 2 * hmargin,
                                  h0 + 2 * vmargin)
    common.image_apply_homography(out2, im2, H2, w0 + 2 * hmargin,
                                  h0 + 2 * vmargin)

    return H1, H2, disp_m, disp_M
Esempio n. 4
0
def rectify_pair(im1,
                 im2,
                 rpc1,
                 rpc2,
                 x,
                 y,
                 w,
                 h,
                 out1,
                 out2,
                 A=None,
                 sift_matches=None,
                 method='rpc',
                 hmargin=0,
                 vmargin=0):
    """
    Rectify a ROI in a pair of images.

    Args:
        im1, im2: paths to two image files
        rpc1, rpc2: paths to the two xml files containing RPC data
        x, y, w, h: four integers defining the rectangular ROI in the first
            image.  (x, y) is the top-left corner, and (w, h) are the dimensions
            of the rectangle.
        out1, out2: paths to the output rectified crops
        A (optional): 3x3 numpy array containing the pointing error correction
            for im2. This matrix is usually estimated with the pointing_accuracy
            module.
        sift_matches (optional): Nx4 numpy array containing a list of sift
            matches, in the full image coordinates frame
        method (default: 'rpc'): option to decide wether to use rpc of sift
            matches for the fundamental matrix estimation.
        {h,v}margin (optional): horizontal and vertical margins added on the
            sides of the rectified images

    Returns:
        H1, H2: Two 3x3 matrices representing the rectifying homographies that
        have been applied to the two original (large) images.
        disp_min, disp_max: horizontal disparity range
    """
    # read RPC data
    rpc1 = rpc_model.RPCModel(rpc1)
    rpc2 = rpc_model.RPCModel(rpc2)

    # compute real or virtual matches
    if method == 'rpc':
        # find virtual matches from RPC camera models
        matches = rpc_utils.matches_from_rpc(rpc1, rpc2, x, y, w, h,
                                             cfg['n_gcp_per_axis'])

        # correct second image coordinates with the pointing correction matrix
        if A is not None:
            matches[:, 2:] = common.points_apply_homography(
                np.linalg.inv(A), matches[:, 2:])
    else:
        matches = sift_matches

    # compute rectifying homographies
    H1, H2, F = rectification_homographies(matches, x, y, w, h)

    if cfg['register_with_shear']:
        # compose H2 with a horizontal shear to reduce the disparity range
        a = np.mean(rpc_utils.altitude_range(rpc1, x, y, w, h))
        lon, lat, alt = rpc_utils.ground_control_points(
            rpc1, x, y, w, h, a, a, 4)
        x1, y1 = rpc1.inverse_estimate(lon, lat, alt)[:2]
        x2, y2 = rpc2.inverse_estimate(lon, lat, alt)[:2]
        m = np.vstack([x1, y1, x2, y2]).T
        m = np.vstack({tuple(row)
                       for row in m})  # remove duplicates due to no alt range
        H2 = register_horizontally_shear(m, H1, H2)

    # compose H2 with a horizontal translation to center disp range around 0
    if sift_matches is not None:
        sift_matches = filter_matches_epipolar_constraint(
            F, sift_matches, cfg['epipolar_thresh'])
        if len(sift_matches) < 10:
            print('WARNING: no registration with less than 10 matches')
        else:
            H2 = register_horizontally_translation(sift_matches, H1, H2)

    # compute disparity range
    if cfg['debug']:
        out_dir = os.path.dirname(out1)
        np.savetxt(os.path.join(out_dir, 'sift_matches_disp.txt'),
                   sift_matches,
                   fmt='%9.3f')
        visualisation.plot_matches(
            im1, im2, rpc1, rpc2, sift_matches, x, y, w, h,
            os.path.join(out_dir, 'sift_matches_disp.png'))
    disp_m, disp_M = disparity_range(rpc1, rpc2, x, y, w, h, H1, H2,
                                     sift_matches, A)

    # recompute hmargin and homographies
    hmargin = int(np.ceil(max([hmargin, np.fabs(disp_m), np.fabs(disp_M)])))
    T = common.matrix_translation(hmargin, vmargin)
    H1, H2 = np.dot(T, H1), np.dot(T, H2)

    # compute rectifying homographies for non-epipolar mode (rectify the secondary tile only)
    if block_matching.rectify_secondary_tile_only(cfg['matching_algorithm']):
        H1_inv = np.linalg.inv(H1)
        H1 = np.eye(
            3
        )  # H1 is replaced by 2-D array with ones on the diagonal and zeros elsewhere
        H2 = np.dot(H1_inv, H2)
        T = common.matrix_translation(-x + hmargin, -y + vmargin)
        H1 = np.dot(T, H1)
        H2 = np.dot(T, H2)

    # compute output images size
    roi = [[x, y], [x + w, y], [x + w, y + h], [x, y + h]]
    pts1 = common.points_apply_homography(H1, roi)
    x0, y0, w0, h0 = common.bounding_box2D(pts1)
    # check that the first homography maps the ROI in the positive quadrant
    np.testing.assert_allclose(np.round([x0, y0]), [hmargin, vmargin],
                               atol=.01)

    # apply homographies and do the crops
    common.image_apply_homography(out1, im1, H1, w0 + 2 * hmargin,
                                  h0 + 2 * vmargin)
    common.image_apply_homography(out2, im2, H2, w0 + 2 * hmargin,
                                  h0 + 2 * vmargin)

    if block_matching.rectify_secondary_tile_only(cfg['matching_algorithm']):
        pts_in = [[0, 0], [disp_m, 0], [disp_M, 0]]
        pts_out = common.points_apply_homography(H1_inv, pts_in)
        disp_m = pts_out[1, :] - pts_out[0, :]
        disp_M = pts_out[2, :] - pts_out[0, :]

    return H1, H2, disp_m, disp_M