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cfg.py 1.49 KB
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xiangzhe_lu 提交于 2020-08-28 21:21 . c++ web deployment
# -*- coding:utf-8 -*-
# @time :2019.09.07
# @IDE : pycharm
# @author :lxztju
# @github : https://github.com/lxztju
import os
home = os.path.expanduser('~')
##数据集的类别
NUM_CLASSES = 206
#训练时batch的大小
BATCH_SIZE = 32
#网络默认输入图像的大小
INPUT_SIZE = 300
#训练最多的epoch
MAX_EPOCH = 100
# 使用gpu的数目
GPUS = 2
# 从第几个epoch开始resume训练,如果为0,从头开始
RESUME_EPOCH = 0
WEIGHT_DECAY = 5e-4
MOMENTUM = 0.9
# 初始学习率
LR = 1e-3
# 采用的模型名称
model_name = 'resnext101_32x32d'
from models import Resnet50, Resnet101, Resnext101_32x8d,Resnext101_32x16d, Densenet121, Densenet169, Mobilenetv2, Efficientnet, Resnext101_32x32d, Resnext101_32x48d
MODEL_NAMES = {
'resnext101_32x8d': Resnext101_32x8d,
'resnext101_32x16d': Resnext101_32x16d,
'resnext101_32x48d': Resnext101_32x48d,
'resnext101_32x32d': Resnext101_32x32d,
'resnet50': Resnet50,
'resnet101': Resnet101,
'densenet121': Densenet121,
'densenet169': Densenet169,
'moblienetv2': Mobilenetv2,
'efficientnet-b7': Efficientnet,
'efficientnet-b8': Efficientnet
}
BASE = home + '/data/'
# 训练好模型的保存位置
SAVE_FOLDER = BASE + 'weights/'
#数据集的存放位置
TRAIN_LABEL_DIR =BASE + 'train.txt'
VAL_LABEL_DIR = BASE + 'val.txt'
TEST_LABEL_DIR = BASE + 'test.txt'
##训练完成,权重文件的保存路径,默认保存在trained_model下
TRAINED_MODEL = BASE + 'weights/resnext101_32x32d/epoch_40.pth'
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