美文网首页
修改onnx模型输入大小

修改onnx模型输入大小

作者: leon_tly | 来源:发表于2024-07-09 17:36 被阅读0次

    代码

    modify_model_input_shape.py

    import sys
    from turtle import shape
    import numpy as np
    import onnx
    import onnxruntime
    from onnxsim import simplify
    
    def parse_tensor_shape(tensor_shape_str):
        tensor_shape_dict = {}
        tensor_shape_ele = tensor_shape_str.split(",")
        for shape_ele in tensor_shape_ele:
            tensor_name = shape_ele.split(":")[0]
            shape_str = shape_ele.split(":")[1]
            shape_list = [int(i) for i in shape_str.split("x")]
            tensor_shape_dict[tensor_name] = shape_list
        return tensor_shape_dict
    
    def get_model_info(onnx_file_name):
        onnx_session = onnxruntime.InferenceSession(onnx_file_name)
        input_names = []
        for onnx_node in onnx_session.get_inputs():
            input_names.append(onnx_node.name)
    
        output_names = []
        for onnx_node in onnx_session.get_outputs():
            output_names.append(onnx_node.name)
    
        return onnx_session, input_names, output_names
    
    
    def modify_model_shape(onnx_file_name, input_shapes, output_shapes):
        model = onnx.load(onnx_file_name)
        for i in range(len(model.graph.input)):
            tensor_name = model.graph.input[i].name
            shape_len = len(model.graph.input[i].type.tensor_type.shape.dim)
            for j in range(shape_len):
                model.graph.input[i].type.tensor_type.shape.dim[j].dim_value = input_shapes[tensor_name][j]
    
        for i in range(len(model.graph.output)):
            tensor_name = model.graph.output[i].name
            shape_len = len(model.graph.output[i].type.tensor_type.shape.dim)
            for j in range(shape_len):
                model.graph.output[i].type.tensor_type.shape.dim[j].dim_value = output_shapes[tensor_name][j]
        return model
    
    if __name__ == "__main__":
        if len(sys.argv) != 4:
            print("wrong input parameters....")
            print("{} input_onnx_name tensorname1:shape,tesnsorname2:shape output_onnx_name".format(sys.argv[0]))
            print("for example:{} test.onnx input:1x3x480x480 save.onnx".format(sys.argv[0]))
        input_onnx_name = sys.argv[1]
        tensor_shape_str = sys.argv[2]
        output_onnx_name = sys.argv[3]
        tensor_shape_dict = parse_tensor_shape(tensor_shape_str)
        # 1 prerun model get model info 
        onnx_session, input_names, output_names = get_model_info(input_onnx_name)
    
        # 2 check model input with sys.argv[2]
        input_tensor_set = set(tensor_shape_dict.keys())
        model_tensor_set = set(input_names)
        if model_tensor_set < input_tensor_set:
            print("model tensor names {} differen with input tensor {}".format(input_tensor_set, model_tensor_set))
        else:
            # 3 inference with new shape get output tensors shape
            model_input_shape_dict = {}
            model_output_shape_dict = {}
            input_feed = {}
            for tensor_name in input_names:
                tensor_shape = tensor_shape_dict[tensor_name]
                input_data = np.ones(tensor_shape).astype(np.float32)
                input_feed[tensor_name] = input_data
            pred_result = onnx_session.run(output_names, input_feed=input_feed)
    
            # 4 modify model input/output shape
            for i in range(len(output_names)):
                model_output_shape_dict[output_names[i]] = pred_result[i].shape
            for i in range(len(input_names)):
                model_input_shape_dict[input_names[i]] = input_feed[input_names[i]].shape        
            
            new_model = modify_model_shape(input_onnx_name, model_input_shape_dict, model_output_shape_dict)
    
            # 5 save new model
            model_simp, check = simplify(new_model)
            assert check, "Simplified ONNX model could not be validated"
            onnx.save(model_simp, output_onnx_name)
    

    使用

    python3 modify_model_input_shape.py test.onnx input:1x3x480x480 save.onnx
    

    相关文章

      网友评论

          本文标题:修改onnx模型输入大小

          本文链接:https://www.haomeiwen.com/subject/lzlzcjtx.html