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| """Square box coder.
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| Square box coder follows the coding schema described below:
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| l = sqrt(h * w)
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| la = sqrt(ha * wa)
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| ty = (y - ya) / la
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| tx = (x - xa) / la
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| tl = log(l / la)
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| where x, y, w, h denote the box's center coordinates, width, and height,
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| respectively. Similarly, xa, ya, wa, ha denote the anchor's center
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| coordinates, width and height. tx, ty, tl denote the anchor-encoded
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| center, and length, respectively. Because the encoded box is a square, only
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| one length is encoded.
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| This has shown to provide performance improvements over the Faster RCNN box
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| coder when the objects being detected tend to be square (e.g. faces) and when
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| the input images are not distorted via resizing.
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| """
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| import tensorflow.compat.v1 as tf
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| from object_detection.core import box_coder
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| from object_detection.core import box_list
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| EPSILON = 1e-8
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| class SquareBoxCoder(box_coder.BoxCoder):
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| """Encodes a 3-scalar representation of a square box."""
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| def __init__(self, scale_factors=None):
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| """Constructor for SquareBoxCoder.
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| Args:
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| scale_factors: List of 3 positive scalars to scale ty, tx, and tl.
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| If set to None, does not perform scaling. For faster RCNN,
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| the open-source implementation recommends using [10.0, 10.0, 5.0].
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| Raises:
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| ValueError: If scale_factors is not length 3 or contains values less than
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| or equal to 0.
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| """
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| if scale_factors:
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| if len(scale_factors) != 3:
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| raise ValueError('The argument scale_factors must be a list of length '
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| '3.')
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| if any(scalar <= 0 for scalar in scale_factors):
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| raise ValueError('The values in scale_factors must all be greater '
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| 'than 0.')
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| self._scale_factors = scale_factors
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| @property
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| def code_size(self):
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| return 3
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| def _encode(self, boxes, anchors):
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| """Encodes a box collection with respect to an anchor collection.
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| Args:
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| boxes: BoxList holding N boxes to be encoded.
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| anchors: BoxList of anchors.
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| Returns:
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| a tensor representing N anchor-encoded boxes of the format
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| [ty, tx, tl].
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| """
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| ycenter_a, xcenter_a, ha, wa = anchors.get_center_coordinates_and_sizes()
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| la = tf.sqrt(ha * wa)
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| ycenter, xcenter, h, w = boxes.get_center_coordinates_and_sizes()
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| l = tf.sqrt(h * w)
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| la += EPSILON
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| l += EPSILON
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| tx = (xcenter - xcenter_a) / la
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| ty = (ycenter - ycenter_a) / la
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| tl = tf.log(l / la)
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| if self._scale_factors:
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| ty *= self._scale_factors[0]
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| tx *= self._scale_factors[1]
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| tl *= self._scale_factors[2]
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| return tf.transpose(tf.stack([ty, tx, tl]))
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| def _decode(self, rel_codes, anchors):
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| """Decodes relative codes to boxes.
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| Args:
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| rel_codes: a tensor representing N anchor-encoded boxes.
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| anchors: BoxList of anchors.
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| Returns:
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| boxes: BoxList holding N bounding boxes.
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| """
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| ycenter_a, xcenter_a, ha, wa = anchors.get_center_coordinates_and_sizes()
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| la = tf.sqrt(ha * wa)
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| ty, tx, tl = tf.unstack(tf.transpose(rel_codes))
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| if self._scale_factors:
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| ty /= self._scale_factors[0]
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| tx /= self._scale_factors[1]
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| tl /= self._scale_factors[2]
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| l = tf.exp(tl) * la
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| ycenter = ty * la + ycenter_a
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| xcenter = tx * la + xcenter_a
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| ymin = ycenter - l / 2.
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| xmin = xcenter - l / 2.
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| ymax = ycenter + l / 2.
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| xmax = xcenter + l / 2.
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| return box_list.BoxList(tf.transpose(tf.stack([ymin, xmin, ymax, xmax])))
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