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| import numpy as np | |
| import onnx | |
| from onnx import shape_inference | |
| try: | |
| import onnx_graphsurgeon as gs | |
| except Exception as e: | |
| print('Import onnx_graphsurgeon failure: %s' % e) | |
| import logging | |
| LOGGER = logging.getLogger(__name__) | |
| class RegisterNMS(object): | |
| def __init__( | |
| self, | |
| onnx_model_path: str, | |
| precision: str = "fp32", | |
| ): | |
| self.graph = gs.import_onnx(onnx.load(onnx_model_path)) | |
| assert self.graph | |
| LOGGER.info("ONNX graph created successfully") | |
| # Fold constants via ONNX-GS that PyTorch2ONNX may have missed | |
| self.graph.fold_constants() | |
| self.precision = precision | |
| self.batch_size = 1 | |
| def infer(self): | |
| """ | |
| Sanitize the graph by cleaning any unconnected nodes, do a topological resort, | |
| and fold constant inputs values. When possible, run shape inference on the | |
| ONNX graph to determine tensor shapes. | |
| """ | |
| for _ in range(3): | |
| count_before = len(self.graph.nodes) | |
| self.graph.cleanup().toposort() | |
| try: | |
| for node in self.graph.nodes: | |
| for o in node.outputs: | |
| o.shape = None | |
| model = gs.export_onnx(self.graph) | |
| model = shape_inference.infer_shapes(model) | |
| self.graph = gs.import_onnx(model) | |
| except Exception as e: | |
| LOGGER.info(f"Shape inference could not be performed at this time:\n{e}") | |
| try: | |
| self.graph.fold_constants(fold_shapes=True) | |
| except TypeError as e: | |
| LOGGER.error( | |
| "This version of ONNX GraphSurgeon does not support folding shapes, " | |
| f"please upgrade your onnx_graphsurgeon module. Error:\n{e}" | |
| ) | |
| raise | |
| count_after = len(self.graph.nodes) | |
| if count_before == count_after: | |
| # No new folding occurred in this iteration, so we can stop for now. | |
| break | |
| def save(self, output_path): | |
| """ | |
| Save the ONNX model to the given location. | |
| Args: | |
| output_path: Path pointing to the location where to write | |
| out the updated ONNX model. | |
| """ | |
| self.graph.cleanup().toposort() | |
| model = gs.export_onnx(self.graph) | |
| onnx.save(model, output_path) | |
| LOGGER.info(f"Saved ONNX model to {output_path}") | |
| def register_nms( | |
| self, | |
| *, | |
| score_thresh: float = 0.25, | |
| nms_thresh: float = 0.45, | |
| detections_per_img: int = 100, | |
| ): | |
| """ | |
| Register the ``EfficientNMS_TRT`` plugin node. | |
| NMS expects these shapes for its input tensors: | |
| - box_net: [batch_size, number_boxes, 4] | |
| - class_net: [batch_size, number_boxes, number_labels] | |
| Args: | |
| score_thresh (float): The scalar threshold for score (low scoring boxes are removed). | |
| nms_thresh (float): The scalar threshold for IOU (new boxes that have high IOU | |
| overlap with previously selected boxes are removed). | |
| detections_per_img (int): Number of best detections to keep after NMS. | |
| """ | |
| self.infer() | |
| # Find the concat node at the end of the network | |
| op_inputs = self.graph.outputs | |
| op = "EfficientNMS_TRT" | |
| attrs = { | |
| "plugin_version": "1", | |
| "background_class": -1, # no background class | |
| "max_output_boxes": detections_per_img, | |
| "score_threshold": score_thresh, | |
| "iou_threshold": nms_thresh, | |
| "score_activation": False, | |
| "box_coding": 0, | |
| } | |
| if self.precision == "fp32": | |
| dtype_output = np.float32 | |
| elif self.precision == "fp16": | |
| dtype_output = np.float16 | |
| else: | |
| raise NotImplementedError(f"Currently not supports precision: {self.precision}") | |
| # NMS Outputs | |
| output_num_detections = gs.Variable( | |
| name="num_dets", | |
| dtype=np.int32, | |
| shape=[self.batch_size, 1], | |
| ) # A scalar indicating the number of valid detections per batch image. | |
| output_boxes = gs.Variable( | |
| name="det_boxes", | |
| dtype=dtype_output, | |
| shape=[self.batch_size, detections_per_img, 4], | |
| ) | |
| output_scores = gs.Variable( | |
| name="det_scores", | |
| dtype=dtype_output, | |
| shape=[self.batch_size, detections_per_img], | |
| ) | |
| output_labels = gs.Variable( | |
| name="det_classes", | |
| dtype=np.int32, | |
| shape=[self.batch_size, detections_per_img], | |
| ) | |
| op_outputs = [output_num_detections, output_boxes, output_scores, output_labels] | |
| # Create the NMS Plugin node with the selected inputs. The outputs of the node will also | |
| # become the final outputs of the graph. | |
| self.graph.layer(op=op, name="batched_nms", inputs=op_inputs, outputs=op_outputs, attrs=attrs) | |
| LOGGER.info(f"Created NMS plugin '{op}' with attributes: {attrs}") | |
| self.graph.outputs = op_outputs | |
| self.infer() | |
| def save(self, output_path): | |
| """ | |
| Save the ONNX model to the given location. | |
| Args: | |
| output_path: Path pointing to the location where to write | |
| out the updated ONNX model. | |
| """ | |
| self.graph.cleanup().toposort() | |
| model = gs.export_onnx(self.graph) | |
| onnx.save(model, output_path) | |
| LOGGER.info(f"Saved ONNX model to {output_path}") | |