X-Git-Url: https://gerrit.akraino.org/r/gitweb?a=blobdiff_plain;f=example-apps%2FPDD%2Fpcb-defect-detection%2Flibs%2Fbox_utils%2Fboxes_utils_backup.py;fp=example-apps%2FPDD%2Fpcb-defect-detection%2Flibs%2Fbox_utils%2Fboxes_utils_backup.py;h=e9b188533a3b922678961d32ce2e539082f44a4f;hb=a785567fb9acfc68536767d20f60ba917ae85aa1;hp=0000000000000000000000000000000000000000;hpb=94a133e696b9b2a7f73544462c2714986fa7ab4a;p=ealt-edge.git diff --git a/example-apps/PDD/pcb-defect-detection/libs/box_utils/boxes_utils_backup.py b/example-apps/PDD/pcb-defect-detection/libs/box_utils/boxes_utils_backup.py new file mode 100755 index 0000000..e9b1885 --- /dev/null +++ b/example-apps/PDD/pcb-defect-detection/libs/box_utils/boxes_utils_backup.py @@ -0,0 +1,110 @@ +# -*- coding: utf-8 -*- + +from __future__ import absolute_import +from __future__ import division +from __future__ import print_function + +import tensorflow as tf + +def ious_calu(boxes_1, boxes_2): + ''' + + :param boxes_1: [N, 4] [xmin, ymin, xmax, ymax] + :param boxes_2: [M, 4] [xmin, ymin. xmax, ymax] + :return: + ''' + boxes_1 = tf.cast(boxes_1, tf.float32) + boxes_2 = tf.cast(boxes_2, tf.float32) + xmin_1, ymin_1, xmax_1, ymax_1 = tf.split(boxes_1, 4, axis=1) # xmin_1 shape is [N, 1].. + xmin_2, ymin_2, xmax_2, ymax_2 = tf.unstack(boxes_2, axis=1) # xmin_2 shape is [M, ].. + + max_xmin = tf.maximum(xmin_1, xmin_2) + min_xmax = tf.minimum(xmax_1, xmax_2) + + max_ymin = tf.maximum(ymin_1, ymin_2) + min_ymax = tf.minimum(ymax_1, ymax_2) + + overlap_h = tf.maximum(0., min_ymax - max_ymin) # avoid h < 0 + overlap_w = tf.maximum(0., min_xmax - max_xmin) + + overlaps = overlap_h * overlap_w + + area_1 = (xmax_1 - xmin_1) * (ymax_1 - ymin_1) # [N, 1] + area_2 = (xmax_2 - xmin_2) * (ymax_2 - ymin_2) # [M, ] + + ious = overlaps / (area_1 + area_2 - overlaps) + + return ious + + +def clip_boxes_to_img_boundaries(decode_boxes, img_shape): + ''' + + :param decode_boxes: + :return: decode boxes, and already clip to boundaries + ''' + + with tf.name_scope('clip_boxes_to_img_boundaries'): + + # xmin, ymin, xmax, ymax = tf.unstack(decode_boxes, axis=1) + xmin = decode_boxes[:, 0] + ymin = decode_boxes[:, 1] + xmax = decode_boxes[:, 2] + ymax = decode_boxes[:, 3] + img_h, img_w = img_shape[1], img_shape[2] + + img_h, img_w = tf.cast(img_h, tf.float32), tf.cast(img_w, tf.float32) + + xmin = tf.maximum(tf.minimum(xmin, img_w-1.), 0.) + ymin = tf.maximum(tf.minimum(ymin, img_h-1.), 0.) + + xmax = tf.maximum(tf.minimum(xmax, img_w-1.), 0.) + ymax = tf.maximum(tf.minimum(ymax, img_h-1.), 0.) + + return tf.transpose(tf.stack([xmin, ymin, xmax, ymax])) + + +def filter_outside_boxes(boxes, img_h, img_w): + ''' + :param anchors:boxes with format [xmin, ymin, xmax, ymax] + :param img_h: height of image + :param img_w: width of image + :return: indices of anchors that inside the image boundary + ''' + + with tf.name_scope('filter_outside_boxes'): + xmin, ymin, xmax, ymax = tf.unstack(boxes, axis=1) + + xmin_index = tf.greater_equal(xmin, 0) + ymin_index = tf.greater_equal(ymin, 0) + xmax_index = tf.less_equal(xmax, tf.cast(img_w, tf.float32)) + ymax_index = tf.less_equal(ymax, tf.cast(img_h, tf.float32)) + + indices = tf.transpose(tf.stack([xmin_index, ymin_index, xmax_index, ymax_index])) + indices = tf.cast(indices, dtype=tf.int32) + indices = tf.reduce_sum(indices, axis=1) + indices = tf.where(tf.equal(indices, 4)) + # indices = tf.equal(indices, 4) + return tf.reshape(indices, [-1]) + + +def padd_boxes_with_zeros(boxes, scores, max_num_of_boxes): + + ''' + num of boxes less than max num of boxes, so it need to pad with zeros[0, 0, 0, 0] + :param boxes: + :param scores: [-1] + :param max_num_of_boxes: + :return: + ''' + + pad_num = tf.cast(max_num_of_boxes, tf.int32) - tf.shape(boxes)[0] + + zero_boxes = tf.zeros(shape=[pad_num, 4], dtype=boxes.dtype) + zero_scores = tf.zeros(shape=[pad_num], dtype=scores.dtype) + + final_boxes = tf.concat([boxes, zero_boxes], axis=0) + + final_scores = tf.concat([scores, zero_scores], axis=0) + + return final_boxes, final_scores \ No newline at end of file