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onnx_helper.py
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onnx_helper.py
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import argparse
import datetime
import os
import os.path as osp
import cv2
import numpy as np
import onnx
import onnxruntime
from onnx import numpy_helper
class ArcFaceORT:
def __init__(self, model_path):
self.model_path = model_path
def check(self, test_img=None):
max_model_size_mb = 1024
max_feat_dim = 512
max_time_cost = 15
if not os.path.exists(self.model_path):
return "model_path not exists"
if not os.path.isdir(self.model_path):
return "model_path should be directory"
onnx_files = []
for _file in os.listdir(self.model_path):
print('file_:', _file)
if _file.endswith('.onnx'):
onnx_files.append(osp.join(self.model_path, _file))
if len(onnx_files) == 0:
return "do not have onnx files"
self.model_file = sorted(onnx_files)[-1]
print('use onnx-model:', self.model_file)
try:
session = onnxruntime.InferenceSession(self.model_file, None)
except:
return "load onnx failed"
input_cfg = session.get_inputs()[0]
input_shape = input_cfg.shape
print('input-shape:', input_shape)
if len(input_shape) != 4:
return "length of input_shape should be 4"
if not isinstance(input_shape[0], str):
# return "input_shape[0] should be str to support batch-inference"
print('reset input-shape[0] to None')
model = onnx.load(self.model_file)
model.graph.input[0].type.tensor_type.shape.dim[0].dim_param = 'None'
new_model_file = osp.join(self.model_path, 'zzzzrefined.onnx')
onnx.save(model, new_model_file)
self.model_file = new_model_file
print('use new onnx-model:', self.model_file)
try:
session = onnxruntime.InferenceSession(self.model_file, None)
except:
return "load onnx failed"
input_cfg = session.get_inputs()[0]
input_shape = input_cfg.shape
print('new-input-shape:', input_shape)
self.image_size = tuple(input_shape[2:4][::-1])
# print('image_size:', self.image_size)
input_name = input_cfg.name
outputs = session.get_outputs()
output_names = []
for o in outputs:
output_names.append(o.name)
# print(o.name, o.shape)
if len(output_names) != 1:
return "number of output nodes should be 1"
self.session = session
self.input_name = input_name
self.output_names = output_names
# print(self.output_names)
model = onnx.load(self.model_file)
graph = model.graph
if len(graph.node) < 8:
return "too small onnx graph"
input_size = (112, 112)
self.crop = None
if True:
crop_file = osp.join(self.model_path, 'crop.txt')
if osp.exists(crop_file):
lines = open(crop_file, 'r').readlines()
if len(lines) != 6:
return "crop.txt should contain 6 lines"
lines = [int(x) for x in lines]
self.crop = lines[:4]
input_size = tuple(lines[4:6])
if input_size != self.image_size:
return "input-size is inconsistant with onnx model input, %s vs %s" % (input_size, self.image_size)
self.model_size_mb = os.path.getsize(self.model_file) / float(1024 * 1024)
if self.model_size_mb > max_model_size_mb:
return "max model size exceed, given %.3f-MB" % self.model_size_mb
input_mean = None
input_std = None
if True:
pn_file = osp.join(self.model_path, 'pixel_norm.txt')
if osp.exists(pn_file):
lines = open(pn_file, 'r').readlines()
if len(lines) != 2:
return "pixel_norm.txt should contain 2 lines"
input_mean = float(lines[0])
input_std = float(lines[1])
if input_mean is not None or input_std is not None:
if input_mean is None or input_std is None:
return "please set input_mean and input_std simultaneously"
else:
find_sub = False
find_mul = False
for nid, node in enumerate(graph.node[:8]):
print(nid, node.name)
if node.name.startswith('Sub') or node.name.startswith('_minus'):
find_sub = True
if node.name.startswith('Mul') or node.name.startswith('_mul'):
find_mul = True
if find_sub and find_mul:
# mxnet arcface model
input_mean = 0.0
input_std = 1.0
else:
input_mean = 127.5
input_std = 127.5
self.input_mean = input_mean
self.input_std = input_std
for initn in graph.initializer:
weight_array = numpy_helper.to_array(initn)
dt = weight_array.dtype
if dt.itemsize < 4:
return 'invalid weight type - (%s:%s)' % (initn.name, dt.name)
if test_img is None:
test_img = np.random.randint(0, 255, size=(self.image_size[1], self.image_size[0], 3), dtype=np.uint8)
else:
test_img = cv2.resize(test_img, self.image_size)
feat, cost = self.benchmark(test_img)
if feat.shape[1] > max_feat_dim:
return "max feat dim exceed, given %d" % feat.shape[1]
self.feat_dim = feat.shape[1]
cost_ms = cost * 1000
if cost_ms > max_time_cost:
return "max time cost exceed, given %.4f" % cost_ms
self.cost_ms = cost_ms
print(
'check stat:, model-size-mb: %.4f, feat-dim: %d, time-cost-ms: %.4f, input-mean: %.3f, input-std: %.3f' % (
self.model_size_mb, self.feat_dim, self.cost_ms, self.input_mean, self.input_std))
return None
def meta_info(self):
return {'model-size-mb': self.model_size_mb, 'feature-dim': self.feat_dim, 'infer': self.cost_ms}
def forward(self, imgs):
if not isinstance(imgs, list):
imgs = [imgs]
input_size = self.image_size
if self.crop is not None:
nimgs = []
for img in imgs:
nimg = img[self.crop[1]:self.crop[3], self.crop[0]:self.crop[2], :]
if nimg.shape[0] != input_size[1] or nimg.shape[1] != input_size[0]:
nimg = cv2.resize(nimg, input_size)
nimgs.append(nimg)
imgs = nimgs
blob = cv2.dnn.blobFromImages(imgs, 1.0 / self.input_std, input_size,
(self.input_mean, self.input_mean, self.input_mean), swapRB=True)
net_out = self.session.run(self.output_names, {self.input_name: blob})[0]
return net_out
def benchmark(self, img):
input_size = self.image_size
if self.crop is not None:
nimg = img[self.crop[1]:self.crop[3], self.crop[0]:self.crop[2], :]
if nimg.shape[0] != input_size[1] or nimg.shape[1] != input_size[0]:
nimg = cv2.resize(nimg, input_size)
img = nimg
blob = cv2.dnn.blobFromImage(img, 1.0 / self.input_std, input_size,
(self.input_mean, self.input_mean, self.input_mean), swapRB=True)
costs = []
for _ in range(50):
ta = datetime.datetime.now()
net_out = self.session.run(self.output_names, {self.input_name: blob})[0]
tb = datetime.datetime.now()
cost = (tb - ta).total_seconds()
costs.append(cost)
costs = sorted(costs)
cost = costs[5]
return net_out, cost
if __name__ == '__main__':
parser = argparse.ArgumentParser()
parser.add_argument("--model_root", help="onnx model root, default is './'", default="./")
args = parser.parse_args()
ArcFaceORT(args.model_root).check()