onnx模型推理(python)

以下ONNX一个检测模型的推理过程,其他模型稍微修改即可

# -*-coding: utf-8 -*-

import os, sys

sys.path.append(os.getcwd())
import onnxruntime
import onnx


class ONNXModel():
def __init__(self, onnx_path):
"""
:param onnx_path:
"""
self.onnx_session = onnxruntime.InferenceSession(onnx_path)
self.input_name = self.get_input_name(self.onnx_session)
self.output_name = self.get_output_name(self.onnx_session)
print("input_name:{}".format(self.input_name))
print("output_name:{}".format(self.output_name))

def get_output_name(self, onnx_session):
"""
output_name = onnx_session.get_outputs()[0].name
:param onnx_session:
:return:
"""
output_name = []
for node in onnx_session.get_outputs():
output_name.append(node.name)
return output_name

def get_input_name(self, onnx_session):
"""
input_name = onnx_session.get_inputs()[0].name
:param onnx_session:
:return:
"""
input_name = []
for node in onnx_session.get_inputs():
input_name.append(node.name)
return input_name

def get_input_feed(self, input_name, image_tensor):
"""
input_feed={self.input_name: image_tensor}
:param input_name:
:param image_tensor:
:return:
"""
input_feed = {}
for name in input_name:
input_feed[name] = image_tensor
return input_feed

def forward(self, image_tensor):
'''
image_tensor = image.transpose(2, 0, 1)
image_tensor = image_tensor[np.newaxis, :]
onnx_session.run([output_name], {input_name: x})
:param image_tensor:
:return:
'''
# 输入数据的类型必须与模型一致,以下三种写法都是可以的
# scores, boxes = self.onnx_session.run(None, {self.input_name: image_tensor})
# scores, boxes = self.onnx_session.run(self.output_name, input_feed={self.input_name: image_tensor})
input_feed = self.get_input_feed(self.input_name, image_tensor)
scores, boxes = self.onnx_session.run(self.output_name, input_feed=input_feed)
return scores, boxes