# Copyright (c) OpenMMLab. All rights reserved. # This script serves the sole purpose of converting skeleton-based graph # in MMAction2 to ONNX files. Please note that attempting to convert other # models using this script may not yield successful results. import argparse import numpy as np import onnxruntime import torch import torch.nn as nn from mmengine import Config from mmengine.registry import init_default_scope from mmengine.runner import load_checkpoint from mmengine.structures import LabelData from mmaction.registry import MODELS from mmaction.structures import ActionDataSample def parse_args(): parser = argparse.ArgumentParser(description='Get model flops and params') parser.add_argument('config', help='config file path') parser.add_argument('checkpoint', help='checkpoint file') parser.add_argument( '--num_frames', type=int, default=150, help='number of input frames.') parser.add_argument( '--num_person', type=int, default=2, help='number of maximum person.') parser.add_argument( '--num_joints', type=int, default=0, help='number of joints. If not given, will use default settings from' 'the config file') parser.add_argument( '--device', type=str, default='cpu', help='CPU/CUDA device option') parser.add_argument( '--output_file', type=str, default='stgcn.onnx', help='file name of the output onnx file') args = parser.parse_args() return args class AvgPool2d(nn.Module): def forward(self, x): return x.mean(dim=(-1, -2), keepdims=True) class MaxPool2d(nn.Module): def forward(self, x): x = x.max(dim=-1, keepdim=True)[0] x = x.max(dim=-2, keepdim=True)[0] return x class GCNNet(nn.Module): def __init__(self, base_model): super(GCNNet, self).__init__() self.backbone = base_model.backbone self.head = base_model.cls_head if hasattr(self.head, 'pool'): pool = self.head.pool if isinstance(pool, nn.AdaptiveAvgPool2d): assert pool.output_size == 1 self.head.pool = AvgPool2d() elif isinstance(pool, nn.AdaptiveMaxPool2d): assert pool.output_size == 1 self.head.pool = MaxPool2d() def forward(self, input_tensor): feat = self.backbone(input_tensor) cls_score = self.head(feat) return cls_score def softmax(x): x = np.exp(x - x.max()) return x / x.sum() def main(): args = parse_args() config = Config.fromfile(args.config) init_default_scope(config.get('default_scope', 'mmaction')) if config.model.type != 'RecognizerGCN': print( 'This script serves the sole purpose of converting skeleton-based ' 'graph in MMAction2 to ONNX files. Please note that attempting to ' 'convert other models using this script may not yield successful ' 'results.\n\n') base_model = MODELS.build(config.model) load_checkpoint(base_model, args.checkpoint, map_location='cpu') base_model.to(args.device) lookup = {'openpose': 18, 'nturgb+d': 25, 'coco': 17} num_joints = args.num_joints num_person = args.num_person num_frames = args.num_frames if num_joints == 0: layout = config.model.backbone.graph_cfg.layout if layout not in lookup: raise KeyError( '`layout` not supported, please specify `num_joints`') num_joints = lookup[layout] input_tensor = torch.randn(1, num_person, num_frames, num_joints, 3) input_tensor = input_tensor.clamp(-3, 3).to(args.device) base_model.eval() data_sample = ActionDataSample() data_sample.pred_scores = LabelData() data_sample.pred_labels = LabelData() base_output = base_model( input_tensor.unsqueeze(0), data_samples=[data_sample], mode='predict')[0] base_output = base_output.pred_score.detach().cpu().numpy() model = GCNNet(base_model).to(args.device) model.eval() torch.onnx.export( model, (input_tensor), args.output_file, input_names=['input_tensor'], output_names=['cls_score'], export_params=True, do_constant_folding=True, verbose=False, opset_version=12, dynamic_axes={ 'input_tensor': { 0: 'batch_size', 1: 'num_person', 2: 'num_frames' }, 'cls_score': { 0: 'batch_size' } }) print(f'Successfully export the onnx file to {args.output_file}') # Test exported file session = onnxruntime.InferenceSession(args.output_file) input_feed = {'input_tensor': input_tensor.cpu().data.numpy()} outputs = session.run(['cls_score'], input_feed=input_feed) output = softmax(outputs[0][0]) diff = abs(base_output - output).max() if diff < 1e-5: print('The output difference is smaller than 1e-5.') if __name__ == '__main__': main()