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测试集处理 #52
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是的,当时官方也是这样做的。如果测试时固定大小我也有做过,精度会有一定下降。建议多次取均值,下一次更新考虑自主选择测试方法 |
那我也可以把测试集这部分加上标签,送进去训练和测试,这样也行吧? |
测试时将训练参数设置不做任何增强和裁剪就可以稳定输出了,唯一的问题是,训练时进行了增强数据,测试时不做处理的结果会差很多。 |
已修复评估时结果不稳定问题,可拉取最新代码 |
在train.py中为什么加载数据这里val_pipeline = copy.deepcopy(train_pipeline) 测试集的处理需要复制训练集的处理,这样训练集每次都会随机裁剪尺寸,在evaluation.py里也是这样,
train_dataset = Mydataset(train_datas, train_pipeline)
val_pipeline = copy.deepcopy(train_pipeline)
val_dataset = Mydataset(val_datas, val_pipeline)
train_loader = DataLoader(train_dataset, shuffle=True, batch_size=data_cfg.get('batch_size'), num_workers=data_cfg.get('num_workers'),pin_memory=True, drop_last=True, collate_fn=collate)
val_loader = DataLoader(val_dataset, shuffle=False, batch_size=data_cfg.get('batch_size'), num_workers=data_cfg.get('num_workers'), pin_memory=True,
drop_last=True, collate_fn=collate)
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