205 lines
7.5 KiB
Python
205 lines
7.5 KiB
Python
# Licensed to the Apache Software Foundation (ASF) under one
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# or more contributor license agreements. See the NOTICE file
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# distributed with this work for additional information
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# regarding copyright ownership. The ASF licenses this file
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# to you under the Apache License, Version 2.0 (the
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# "License"); you may not use this file except in compliance
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# with the License. You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing,
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# software distributed under the License is distributed on an
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# "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
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# KIND, either express or implied. See the License for the
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# specific language governing permissions and limitations
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# under the License.
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"""Non-maximum suppression operators."""
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from . import _ffi_api
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def all_class_non_max_suppression(
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boxes,
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scores,
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max_output_boxes_per_class,
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iou_threshold,
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score_threshold,
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output_format="onnx",
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):
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"""Non-maximum suppression operator for object detection, corresponding to ONNX
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NonMaxSuppression and TensorFlow combined_non_max_suppression.
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NMS is performed for each class separately.
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Parameters
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----------
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boxes : relax.Expr
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3-D tensor with shape (batch_size, num_boxes, 4)
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scores: relax.Expr
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3-D tensor with shape (batch_size, num_classes, num_boxes)
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max_output_boxes_per_class : relax.Expr
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The maxinum number of output selected boxes per class
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iou_threshold : relax.Expr
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IoU test threshold
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score_threshold : relax.Expr
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Score threshold to filter out low score boxes early
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output_format : str, optional
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"onnx" or "tensorflow", see below.
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Returns
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-------
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out : relax.Expr
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If `output_format` is "onnx", the output is two tensors. The first is `indices` of size
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`(batch_size * num_class* num_boxes , 3)` and the second is a scalar tensor
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`num_total_detection` of shape `(1,)` representing the total number of selected
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boxes. The three values in `indices` encode batch, class, and box indices.
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Rows of `indices` are ordered such that selected boxes from batch 0, class 0 come
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first, in descending of scores, followed by boxes from batch 0, class 1 etc.
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The output uses dynamic_strided_slice to trim to only valid detections,
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so the first tensor has shape (num_total_detection, 3) containing only valid rows.
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If `output_format` is "tensorflow", the output is three tensors, the first
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is `indices` of size `(batch_size, num_class * num_boxes , 2)`, the second is `scores` of
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size `(batch_size, num_class * num_boxes)`, and the third is `num_total_detection` of size
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`(batch_size,)` representing the total number of selected boxes per batch. The two values
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in `indices` encode class and box indices. Of num_class * num_boxes boxes in `indices` at
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batch b, only the first `num_total_detection[b]` entries are valid. The second axis of
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`indices` and `scores` are sorted within each class by box scores, but not across classes.
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So the box indices and scores for the class 0 come first in a sorted order, followed by
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the class 1 etc.
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"""
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return _ffi_api.all_class_non_max_suppression(
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boxes, scores, max_output_boxes_per_class, iou_threshold, score_threshold, output_format
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)
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def get_valid_counts(data, score_threshold=0, id_index=0, score_index=1):
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"""Get valid count of bounding boxes given a score threshold.
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Also moves valid boxes to the top of input data.
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Parameters
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----------
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data : relax.Expr
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3-D tensor with shape [batch_size, num_anchors, elem_length].
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score_threshold : float, optional
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Lower limit of score for valid bounding boxes.
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id_index : int, optional
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Index of the class categories. Set to ``-1`` to disable the class-id check.
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score_index : int, optional
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Index of the scores/confidence of boxes.
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Returns
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-------
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out : relax.Expr
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A tuple ``(valid_count, out_tensor, out_indices)`` where ``valid_count``
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has shape ``[batch_size]``, ``out_tensor`` has shape
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``[batch_size, num_anchors, elem_length]``, and ``out_indices`` has shape
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``[batch_size, num_anchors]``.
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"""
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return _ffi_api.get_valid_counts(data, score_threshold, id_index, score_index)
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def non_max_suppression(
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data,
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valid_count,
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indices,
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max_output_size=-1,
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iou_threshold=0.5,
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force_suppress=False,
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top_k=-1,
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coord_start=2,
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score_index=1,
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id_index=0,
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return_indices=True,
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invalid_to_bottom=False,
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soft_nms_sigma=0.0,
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score_threshold=0.0,
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):
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"""Non-maximum suppression operator for object detection.
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Parameters
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----------
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data : relax.Expr
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3-D tensor with shape [batch_size, num_anchors, elem_length].
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valid_count : relax.Expr
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1-D tensor for valid number of boxes.
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indices : relax.Expr
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2-D tensor with shape [batch_size, num_anchors].
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max_output_size : int, optional
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Max number of output valid boxes, -1 for no limit.
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iou_threshold : float, optional
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Non-maximum suppression IoU threshold.
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force_suppress : bool, optional
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Whether to suppress all detections regardless of class_id. When
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``id_index`` is ``-1``, all valid boxes are treated as belonging to the
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same class, so this flag has the same effect as ``True``.
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top_k : int, optional
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Keep maximum top k detections before nms, -1 for no limit.
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coord_start : int, optional
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Start index of the consecutive 4 coordinates.
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score_index : int, optional
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Index of the scores/confidence of boxes.
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id_index : int, optional
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Index of the class categories. Set to ``-1`` to suppress boxes across
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all classes.
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return_indices : bool, optional
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Whether to return box indices in input data.
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invalid_to_bottom : bool, optional
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Whether to move valid bounding boxes to the top of the returned tensor.
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This option only affects the ``return_indices=False`` path.
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soft_nms_sigma : float, optional
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Sigma for soft-NMS Gaussian penalty. When ``0.0`` (default), standard
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hard NMS is used. Positive values decay overlapping box scores instead
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of suppressing them outright.
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score_threshold : float, optional
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Post-decay minimum score for a box to remain eligible during soft-NMS.
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Only used when ``soft_nms_sigma > 0``. This is distinct from
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``get_valid_counts.score_threshold``, which filters boxes before NMS.
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Defaults to ``0.0``.
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Returns
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-------
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out : relax.Expr
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The return tuple shape depends on ``soft_nms_sigma``.
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If ``return_indices`` is ``True`` and ``soft_nms_sigma`` is ``0.0``,
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returns a 2-tuple ``(box_indices, valid_box_count)`` with shapes
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``[batch_size, num_anchors]`` and ``[batch_size, 1]``.
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If ``return_indices`` is ``True`` and ``soft_nms_sigma > 0``,
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returns a 3-tuple ``(out_data, box_indices, valid_box_count)`` where
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decayed ``out_data`` is prepended and has the same shape as the input
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data.
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Otherwise returns the modified data tensor.
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"""
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return _ffi_api.non_max_suppression(
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data,
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valid_count,
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indices,
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max_output_size,
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iou_threshold,
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force_suppress,
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top_k,
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coord_start,
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score_index,
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id_index,
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return_indices,
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invalid_to_bottom,
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soft_nms_sigma,
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score_threshold,
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)
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