def box_diou(b1, b2): b1_xy = b1[..., :2] b1_wh = b1[..., 2:4] b1_wh_half = b1_wh / 2. b1_mins = b1_xy - b1_wh_half b1_maxes = b1_xy + b1_wh_half b2_xy = b2[..., :2] b2_wh = b2[..., 2:4] b2_wh_half = b2_wh / 2. b2_mins = b2_xy - b2_wh_half b2_maxes = b2_xy + b2_wh_half intersect_mins = K.maximum(b1_mins, b2_mins) intersect_maxes = K.minimum(b1_maxes, b2_maxes) intersect_wh = K.maximum(intersect_maxes - intersect_mins, 0.) intersect_area = intersect_wh[..., 0] * intersect_wh[..., 1] b1_area = b1_wh[..., 0] * b1_wh[..., 1] b2_area = b2_wh[..., 0] * b2_wh[..., 1] union_area = b1_area + b2_area - intersect_area iou = intersect_area / (union_area + K.epsilon()) center_distance = K.sum(K.square(b1_xy - b2_xy), axis=-1) enclose_mins = K.minimum(b1_mins, b2_mins) enclose_maxes = K.maximum(b1_maxes, b2_maxes) enclose_wh = K.maximum(enclose_maxes - enclose_mins, 0.0) enclose_diagonal = K.sum(K.square(enclose_wh), axis=-1) diou = iou - 1.0 * (center_distance) / (enclose_diagonal + K.epsilon()) diou = K.expand_dims(diou, -1) return diou
def euclidean_distance(vects): ''' Computes the euclidean distances between vects[0] and vects[1] ''' x, y = vects return K.sqrt( K.maximum(K.sum(K.square(x - y), axis=1, keepdims=True), K.epsilon()))
def box_iou(b1, b2): """Return iou tensor Parameters ---------- b1: tensor, shape=(i1,...,iN, 4), xywh b2: tensor, shape=(j, 4), xywh Returns ------- iou: tensor, shape=(i1,...,iN, j) """ # Expand dim to apply broadcasting. b1 = K.expand_dims(b1, -2) b1_xy = b1[..., :2] b1_wh = b1[..., 2:4] b1_wh_half = b1_wh / 2. b1_mins = b1_xy - b1_wh_half b1_maxes = b1_xy + b1_wh_half # Expand dim to apply broadcasting. b2 = K.expand_dims(b2, 0) b2_xy = b2[..., :2] b2_wh = b2[..., 2:4] b2_wh_half = b2_wh / 2. b2_mins = b2_xy - b2_wh_half b2_maxes = b2_xy + b2_wh_half intersect_mins = K.maximum(b1_mins, b2_mins) intersect_maxes = K.minimum(b1_maxes, b2_maxes) intersect_wh = K.maximum(intersect_maxes - intersect_mins, 0.) intersect_area = intersect_wh[..., 0] * intersect_wh[..., 1] b1_area = b1_wh[..., 0] * b1_wh[..., 1] b2_area = b2_wh[..., 0] * b2_wh[..., 1] iou = intersect_area / (b1_area + b2_area - intersect_area) return iou
def contrastive_loss(y_true, y_pred): return K.mean(y_true * K.square(K.maximum(y_pred - m_pos, 0)) + (1 - y_true) * K.square(K.maximum(m_neg - y_pred, 0)))
def triplet_loss(_, y_diff): return K.mean(K.maximum(y_diff + m, 0))
def yolo_loss(args, anchors, num_classes, rescore_confidence=False, print_loss=False): """YOLO localization loss function. Parameters ---------- yolo_output : tensor Final convolutional layer features. true_boxes : tensor Ground truth boxes tensor with shape [batch, num_true_boxes, 5] containing box x_center, y_center, width, height, and class. detectors_mask : array 0/1 mask for detector positions where there is a matching ground truth. matching_true_boxes : array Corresponding ground truth boxes for positive detector positions. Already adjusted for conv height and width. anchors : tensor Anchor boxes for model. num_classes : int Number of object classes. rescore_confidence : bool, default=False If true then set confidence target to IOU of best predicted box with the closest matching ground truth box. print_loss : bool, default=False If True then use a tf.Print() to print the loss components. Returns ------- mean_loss : float mean localization loss across minibatch """ (yolo_output, true_boxes, detectors_mask, matching_true_boxes) = args num_anchors = len(anchors) object_scale = 5 no_object_scale = 1 class_scale = 1 coordinates_scale = 1 pred_xy, pred_wh, pred_confidence, pred_class_prob = yolo_head( yolo_output, anchors, num_classes) # Unadjusted box predictions for loss. # TODO: Remove extra computation shared with yolo_head. yolo_output_shape = K.shape(yolo_output) feats = K.reshape(yolo_output, [ -1, yolo_output_shape[1], yolo_output_shape[2], num_anchors, num_classes + 5 ]) pred_boxes = K.concatenate( (K.sigmoid(feats[..., 0:2]), feats[..., 2:4]), axis=-1) # TODO: Adjust predictions by image width/height for non-square images? # IOUs may be off due to different aspect ratio. # Expand pred x,y,w,h to allow comparison with ground truth. # batch, conv_height, conv_width, num_anchors, num_true_boxes, box_params pred_xy = K.expand_dims(pred_xy, 4) pred_wh = K.expand_dims(pred_wh, 4) pred_wh_half = pred_wh / 2. pred_mins = pred_xy - pred_wh_half pred_maxes = pred_xy + pred_wh_half true_boxes_shape = K.shape(true_boxes) # batch, conv_height, conv_width, num_anchors, num_true_boxes, box_params true_boxes = K.reshape(true_boxes, [ true_boxes_shape[0], 1, 1, 1, true_boxes_shape[1], true_boxes_shape[2] ]) true_xy = true_boxes[..., 0:2] true_wh = true_boxes[..., 2:4] # Find IOU of each predicted box with each ground truth box. true_wh_half = true_wh / 2. true_mins = true_xy - true_wh_half true_maxes = true_xy + true_wh_half intersect_mins = K.maximum(pred_mins, true_mins) intersect_maxes = K.minimum(pred_maxes, true_maxes) intersect_wh = K.maximum(intersect_maxes - intersect_mins, 0.) intersect_areas = intersect_wh[..., 0] * intersect_wh[..., 1] pred_areas = pred_wh[..., 0] * pred_wh[..., 1] true_areas = true_wh[..., 0] * true_wh[..., 1] union_areas = pred_areas + true_areas - intersect_areas iou_scores = intersect_areas / union_areas # Best IOUs for each location. best_ious = K.max(iou_scores, axis=4) # Best IOU scores. best_ious = K.expand_dims(best_ious) # A detector has found an object if IOU > thresh for some true box. object_detections = K.cast(best_ious > 0.6, K.dtype(best_ious)) # TODO: Darknet region training includes extra coordinate loss for early # training steps to encourage predictions to match anchor priors. # Determine confidence weights from object and no_object weights. # NOTE: YOLO does not use binary cross-entropy here. no_object_weights = (no_object_scale * (1 - object_detections) * (1 - detectors_mask)) no_objects_loss = no_object_weights * K.square(-pred_confidence) if rescore_confidence: objects_loss = (object_scale * detectors_mask * K.square(best_ious - pred_confidence)) else: objects_loss = (object_scale * detectors_mask * K.square(1 - pred_confidence)) confidence_loss = objects_loss + no_objects_loss # Classification loss for matching detections. # NOTE: YOLO does not use categorical cross-entropy loss here. matching_classes = K.cast(matching_true_boxes[..., 4], 'int32') matching_classes = K.one_hot(matching_classes, num_classes) classification_loss = (class_scale * detectors_mask * K.square(matching_classes - pred_class_prob)) # Coordinate loss for matching detection boxes. matching_boxes = matching_true_boxes[..., 0:4] coordinates_loss = (coordinates_scale * detectors_mask * K.square(matching_boxes - pred_boxes)) confidence_loss_sum = K.sum(confidence_loss) classification_loss_sum = K.sum(classification_loss) coordinates_loss_sum = K.sum(coordinates_loss) total_loss = 0.5 * ( confidence_loss_sum + classification_loss_sum + coordinates_loss_sum) if print_loss: total_loss = tf.Print( total_loss, [ total_loss, confidence_loss_sum, classification_loss_sum, coordinates_loss_sum ], message='yolo_loss, conf_loss, class_loss, box_coord_loss:') return total_loss