354 lines
11 KiB
Python
354 lines
11 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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import tvm
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import tvm.script
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import tvm.testing
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from tvm import IRModule, relax
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from tvm.script import relax as R
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def _check(
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parsed: relax.Function | IRModule,
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expect: relax.Function | IRModule | None,
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):
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test = parsed.script(show_meta=True)
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roundtrip_mod = tvm.script.from_source(test)
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tvm.ir.assert_structural_equal(parsed, roundtrip_mod)
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if expect:
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tvm.ir.assert_structural_equal(parsed, expect)
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def test_all_class_non_max_suppression():
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@R.function
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def foo(
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boxes: R.Tensor((10, 5, 4), "float32"),
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scores: R.Tensor((10, 8, 5), "float32"),
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max_output_boxes_per_class: R.Tensor((), "int64"),
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iou_threshold: R.Tensor((), "float32"),
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score_threshold: R.Tensor((), "float32"),
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) -> R.Tuple(R.Tensor((400, 3), "int64"), R.Tensor((1,), "int64")):
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gv: R.Tuple(R.Tensor((400, 3), "int64"), R.Tensor((1,), "int64")) = (
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R.vision.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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"onnx",
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)
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)
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return gv
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boxes = relax.Var("boxes", R.Tensor((10, 5, 4), "float32"))
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scores = relax.Var("scores", R.Tensor((10, 8, 5), "float32"))
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max_output_boxes_per_class = relax.Var("max_output_boxes_per_class", R.Tensor((), "int64"))
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iou_threshold = relax.Var("iou_threshold", R.Tensor((), "float32"))
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score_threshold = relax.Var("score_threshold", R.Tensor((), "float32"))
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bb = relax.BlockBuilder()
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with bb.function(
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"foo", [boxes, scores, max_output_boxes_per_class, iou_threshold, score_threshold]
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):
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gv = bb.emit(
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relax.op.vision.all_class_non_max_suppression(
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boxes, scores, max_output_boxes_per_class, iou_threshold, score_threshold, "onnx"
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)
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)
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bb.emit_func_output(gv)
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_check(foo, bb.get()["foo"])
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def test_get_valid_counts():
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@R.function
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def foo(
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data: R.Tensor((10, 5, 6), "float32"),
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) -> R.Tuple(
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R.Tensor((10,), "int32"),
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R.Tensor((10, 5, 6), "float32"),
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R.Tensor((10, 5), "int32"),
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):
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gv: R.Tuple(
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R.Tensor((10,), "int32"),
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R.Tensor((10, 5, 6), "float32"),
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R.Tensor((10, 5), "int32"),
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) = R.vision.get_valid_counts(data, score_threshold=0.5, id_index=0, score_index=1)
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return gv
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data = relax.Var("data", R.Tensor((10, 5, 6), "float32"))
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bb = relax.BlockBuilder()
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with bb.function("foo", [data]):
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gv = bb.emit(
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relax.op.vision.get_valid_counts(data, score_threshold=0.5, id_index=0, score_index=1)
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)
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bb.emit_func_output(gv)
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_check(foo, bb.get()["foo"])
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def test_non_max_suppression_return_indices():
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@R.function
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def foo(
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data: R.Tensor((2, 5, 6), "float32"),
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valid_count: R.Tensor((2,), "int32"),
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indices: R.Tensor((2, 5), "int32"),
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) -> R.Tuple(R.Tensor((2, 5), "int32"), R.Tensor((2, 1), "int32")):
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gv: R.Tuple(R.Tensor((2, 5), "int32"), R.Tensor((2, 1), "int32")) = (
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R.vision.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=3,
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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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)
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return gv
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data = relax.Var("data", R.Tensor((2, 5, 6), "float32"))
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valid_count = relax.Var("valid_count", R.Tensor((2,), "int32"))
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indices = relax.Var("indices", R.Tensor((2, 5), "int32"))
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bb = relax.BlockBuilder()
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with bb.function("foo", [data, valid_count, indices]):
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gv = bb.emit(
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relax.op.vision.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=3,
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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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)
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bb.emit_func_output(gv)
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_check(foo, bb.get()["foo"])
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def test_non_max_suppression_return_indices_soft_nms():
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@R.function
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def foo(
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data: R.Tensor((2, 5, 6), "float32"),
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valid_count: R.Tensor((2,), "int32"),
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indices: R.Tensor((2, 5), "int32"),
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) -> R.Tuple(
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R.Tensor((2, 5, 6), "float32"),
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R.Tensor((2, 5), "int32"),
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R.Tensor((2, 1), "int32"),
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):
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gv: R.Tuple(
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R.Tensor((2, 5, 6), "float32"),
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R.Tensor((2, 5), "int32"),
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R.Tensor((2, 1), "int32"),
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) = R.vision.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=3,
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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=0.5,
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score_threshold=0.0,
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)
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return gv
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data = relax.Var("data", R.Tensor((2, 5, 6), "float32"))
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valid_count = relax.Var("valid_count", R.Tensor((2,), "int32"))
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indices = relax.Var("indices", R.Tensor((2, 5), "int32"))
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bb = relax.BlockBuilder()
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with bb.function("foo", [data, valid_count, indices]):
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gv = bb.emit(
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relax.op.vision.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=3,
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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=0.5,
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score_threshold=0.0,
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)
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)
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bb.emit_func_output(gv)
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_check(foo, bb.get()["foo"])
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def test_non_max_suppression_return_data():
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@R.function
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def foo(
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data: R.Tensor((2, 5, 6), "float32"),
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valid_count: R.Tensor((2,), "int32"),
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indices: R.Tensor((2, 5), "int32"),
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) -> R.Tensor((2, 5, 6), "float32"):
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gv: R.Tensor((2, 5, 6), "float32") = R.vision.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=False,
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invalid_to_bottom=True,
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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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return gv
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data = relax.Var("data", R.Tensor((2, 5, 6), "float32"))
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valid_count = relax.Var("valid_count", R.Tensor((2,), "int32"))
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indices = relax.Var("indices", R.Tensor((2, 5), "int32"))
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bb = relax.BlockBuilder()
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with bb.function("foo", [data, valid_count, indices]):
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gv = bb.emit(
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relax.op.vision.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=False,
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invalid_to_bottom=True,
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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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)
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bb.emit_func_output(gv)
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_check(foo, bb.get()["foo"])
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def test_multibox_transform_loc():
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@R.function
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def foo(
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cls: R.Tensor((1, 3, 5), "float32"),
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loc: R.Tensor((1, 20), "float32"),
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anc: R.Tensor((1, 5, 4), "float32"),
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) -> R.Tuple(R.Tensor((1, 5, 4), "float32"), R.Tensor((1, 3, 5), "float32")):
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gv: R.Tuple(R.Tensor((1, 5, 4), "float32"), R.Tensor((1, 3, 5), "float32")) = (
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R.vision.multibox_transform_loc(
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cls,
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loc,
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anc,
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clip=False,
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threshold=0.0,
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variances=(1.0, 1.0, 1.0, 1.0),
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keep_background=True,
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)
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)
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return gv
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cls = relax.Var("cls", R.Tensor((1, 3, 5), "float32"))
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loc = relax.Var("loc", R.Tensor((1, 20), "float32"))
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anc = relax.Var("anc", R.Tensor((1, 5, 4), "float32"))
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bb = relax.BlockBuilder()
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with bb.function("foo", [cls, loc, anc]):
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gv = bb.emit(
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relax.op.vision.multibox_transform_loc(
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cls,
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loc,
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anc,
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clip=False,
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threshold=0.0,
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variances=(1.0, 1.0, 1.0, 1.0),
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keep_background=True,
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)
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)
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bb.emit_func_output(gv)
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_check(foo, bb.get()["foo"])
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def test_roi_align():
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@R.function
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def foo(
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x: R.Tensor((1, 2, 8, 8), "float32"),
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rois: R.Tensor((2, 5), "float32"),
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) -> R.Tensor((2, 2, 3, 3), "float32"):
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gv: R.Tensor((2, 2, 3, 3), "float32") = R.vision.roi_align(
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x,
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rois,
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pooled_size=(3, 3),
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spatial_scale=1.0,
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sample_ratio=2,
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layout="NCHW",
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mode="avg",
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)
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return gv
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x = relax.Var("x", R.Tensor((1, 2, 8, 8), "float32"))
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rois = relax.Var("rois", R.Tensor((2, 5), "float32"))
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bb = relax.BlockBuilder()
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with bb.function("foo", [x, rois]):
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gv = bb.emit(
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relax.op.vision.roi_align(
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x, rois, (3, 3), 1.0, sample_ratio=2, layout="NCHW", mode="avg"
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)
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)
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bb.emit_func_output(gv)
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_check(foo, bb.get()["foo"])
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if __name__ == "__main__":
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tvm.testing.main()
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