AIlib2/DMPR.py

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2025-04-26 10:35:59 +08:00
from DMPRUtils.DMPR_process import DMPR_process
import tensorrt as trt
import sys,os
#from DMPRUtils.model.detector import DirectionalPointDetector
from DMPRUtils.yolo_net import Model
import torch
class DMPRModel(object):
def __init__(self, weights=None,
par={'depth_factor':32,'NUM_FEATURE_MAP_CHANNEL':6,'dmpr_thresh':0.3, 'dmprimg_size':640}
):
self.par = par
self.device = 'cuda:0'
self.half =True
if weights.endswith('.engine'):
self.infer_type ='trt'
elif weights.endswith('.pth') or weights.endswith('.pt') :
self.infer_type ='pth'
else:
print('#########ERROR:',weights,': no registered inference type, exit')
sys.exit(0)
if self.infer_type=='trt':
logger = trt.Logger(trt.Logger.ERROR)
with open(weights, "rb") as f, trt.Runtime(logger) as runtime:
self.model=runtime.deserialize_cuda_engine(f.read())# 输入trt本地文件返回ICudaEngine对象
elif self.infer_type=='pth':
#self.model = DirectionalPointDetector(3, self.par['depth_factor'], self.par['NUM_FEATURE_MAP_CHANNEL']).to(self.device)
confUrl = os.path.join( os.path.dirname(__file__),'DMPRUtils','config','yolov5s.yaml' )
self.model = Model(confUrl, ch=3).to(self.device)
self.model.load_state_dict(torch.load(weights))
print('#######load pt model:%s success '%(weights))
self.par['modelType']=self.infer_type
print('#########加载模型:',weights,' 类型:',self.infer_type)
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def eval(self,image):
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det,timeInfos = DMPR_process(image, self.model, self.device, self.par)
det = det.cpu().detach().numpy()
return det,timeInfos
def get_ms(self,t1,t0):
return (t1-t0)*1000.0
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