def set_log_data(self, cfg):

        super().set_log_data(cfg)
        self.log_keys = [
            'TRAIN_CROSS_LOSS', 'TRAIN_HOMO_LOSS', 'TRAIN_LOCAL_LOSS',
            'TRAIN_PRIOR_LOSS', 'INTERSECTION_MLP', 'LABEL_MLP',
            'INTERSECTION_LIN', 'LABEL_LIN', 'VAL_CLS_ACC_LIN',
            'VAL_CLS_MEAN_ACC_LIN', 'VAL_CLS_ACC_MLP', 'VAL_CLS_MEAN_ACC_MLP'
        ]
        for item in self.log_keys:
            self.loss_meters[item] = AverageMeter()
    def set_log_data(self, cfg):

        super().set_log_data(cfg)
        self.log_keys = [
            'TRAIN_SEMANTIC_LOSS_2DEPTH',
            'TRAIN_SEMANTIC_LOSS_2SEG',
            'TRAIN_PIX2PIX_LOSS_2DEPTH',
            'TRAIN_PIX2PIX_LOSS_2SEG',
        ]
        for item in self.log_keys:
            self.loss_meters[item] = AverageMeter()
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    def validate(self):

        self.phase = 'test'

        # switch to evaluate mode
        self.net.eval()

        intersection_meter = AverageMeter()
        union_meter = AverageMeter()
        target_meter = AverageMeter()
        # batch = tqdm(self.val_loader, total=self.val_image_num // self.batch_size_val)
        with torch.no_grad():
            for i, data in enumerate(self.val_loader):
                self.set_input(data)
                self._forward(if_cls=True, if_trans=False)

                cls_loss = self.result['loss_cls'].mean() * self.cfg.ALPHA_CLS
                self.loss_meters['VAL_CLS_LOSS'].update(cls_loss)
                self.pred = self.cls.data.max(1)[1]
                # self.pred = self.cls.data.max(1)[1].cpu().numpy()
                # label = np.uint8(self.label)

                intersection, union, label = util.intersectionAndUnionGPU(
                    self.pred.cuda(), self.label.cuda(), self.cfg.NUM_CLASSES)
                if self.cfg.multiprocessing_distributed:
                    dist.all_reduce(intersection), dist.all_reduce(
                        union), dist.all_reduce(label)
                intersection, union, label = intersection.cpu().numpy(
                ), union.cpu().numpy(), label.cpu().numpy()
                intersection_meter.update(intersection), union_meter.update(
                    union), target_meter.update(label)

        iou_class = intersection_meter.sum / (union_meter.sum + 1e-10)
        accuracy_class = intersection_meter.sum / (target_meter.sum + 1e-10)
        mIoU = np.mean(iou_class)
        mAcc = np.mean(accuracy_class)
        allAcc = sum(intersection_meter.sum) / (sum(target_meter.sum) + 1e-10)

        self.loss_meters['VAL_CLS_ACC'].update(allAcc)
        self.loss_meters['VAL_CLS_MEAN_ACC'].update(mAcc)
        self.loss_meters['VAL_CLS_MEAN_IOU'].update(mIoU)
    def set_log_data(self, cfg):

        self.loss_meters = defaultdict()
        self.log_keys = [
            'TRAIN_CLS_ACC',
            'VAL_CLS_ACC',  # classification
            'TRAIN_CLS_LOSS',
            'VAL_CLS_LOSS',
            'TRAIN_CLS_MEAN_ACC',
            'VAL_CLS_MEAN_ACC'
        ]
        for item in self.log_keys:
            self.loss_meters[item] = AverageMeter()
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    def set_log_data(self, cfg):

        self.loss_meters = defaultdict()
        self.log_keys = [
            'TRAIN_G_LOSS',
            'TRAIN_SEMANTIC_LOSS',  # semantic
            'TRAIN_PIX2PIX_LOSS',
            'TRAIN_CLS_ACC',
            'VAL_CLS_ACC',  # classification
            'TRAIN_CLS_LOSS',
            'TRAIN_CLS_MEAN_IOU',
            'VAL_CLS_LOSS',
            'VAL_CLS_MEAN_IOU',
            'VAL_CLS_MEAN_ACC'
        ]
        for item in self.log_keys:
            self.loss_meters[item] = AverageMeter()
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    def set_log_data(self, cfg):

        self.loss_meters = defaultdict()
        self.log_keys = [
            'TRAIN_G_LOSS',
            'TRAIN_D_REAL',  # GAN
            'TRAIN_D_FAKE',
            'TRAIN_PIXEL_LOSS',  # pixel-wise
            'VAL_PIXEL_LOSS',
            'TRAIN_SEMANTIC_LOSS',  # semantic
            'TRAIN_CLS_ACC',
            'VAL_CLS_ACC',  # classification
            'TRAIN_CLS_LOSS',
            'VAL_CLS_LOSS',
            'TRAIN_CLS_MEAN_ACC',
            'VAL_CLS_MEAN_ACC'
        ]
        for item in self.log_keys:
            self.loss_meters[item] = AverageMeter()
    def set_log_data(self, cfg):

        self.loss_meters = defaultdict()
        self.log_keys = [
            'TRAIN_GAN_G_LOSS',
            'TRAIN_GAN_D_LOSS',
            'TRAIN_SEMANTIC_LOSS',  # semantic
            'TRAIN_PIX2PIX_LOSS',
            'TRAIN_CONTRAST_LOSS',
            'TRAIN_CLS_ACC',
            'TRAIN_CLS_LOSS',
            'TRAIN_CLS_MEAN_IOU',
            'VAL_CLS_ACC',  # classification
            'VAL_CLS_LOSS',
            'VAL_CLS_MEAN_IOU',
            'VAL_CLS_MEAN_ACC',
            'INTERSECTION',
            'UNION',
            'LABEL',
            'TRAIN_CLS_LOSS_COMPL',
            'TRAIN_CLS_LOSS_FUSE'
        ]
        for item in self.log_keys:
            self.loss_meters[item] = AverageMeter()
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    def test_slide(self):
        intersection_meter = AverageMeter()
        union_meter = AverageMeter()
        target_meter = AverageMeter()
        self.net.eval()
        self.phase = 'test'

        print('testing sliding windows...')
        # batch = tqdm(self.val_loader, total=self.val_image_num // self.batch_size_val)
        for i, data in enumerate(self.val_loader):
            self.set_input(data)
            prediction = util.slide_cal(model=self.net,
                                        image=self.source_modal,
                                        classes=self.cfg.NUM_CLASSES,
                                        crop_size=self.cfg.FINE_SIZE)
            # self.pred = prediction.data.max(1)[1].cpu().numpy()
            self.pred = prediction.max(1)[1]
            # label = np.uint8(self.label)

            intersection, union, label = util.intersectionAndUnionGPU(
                self.pred.cuda(), self.label.cuda(), self.cfg.NUM_CLASSES)
            if self.cfg.multiprocessing_distributed:
                dist.all_reduce(intersection), dist.all_reduce(
                    union), dist.all_reduce(label)
            intersection, union, label = intersection.cpu().numpy(), union.cpu(
            ).numpy(), label.cpu().numpy()
            intersection_meter.update(intersection)
            union_meter.update(union)
            target_meter.update(label)
            print(sum(intersection_meter.val) / sum(target_meter.val))

        iou_class = intersection_meter.sum / (union_meter.sum + 1e-10)
        accuracy_class = intersection_meter.sum / (target_meter.sum + 1e-10)
        mIoU = np.mean(iou_class)
        mAcc = np.mean(accuracy_class)
        allAcc = sum(intersection_meter.sum) / (sum(target_meter.sum) + 1e-10)

        self.loss_meters['VAL_CLS_ACC'].update(allAcc)
        self.loss_meters['VAL_CLS_MEAN_ACC'].update(mAcc)
        self.loss_meters['VAL_CLS_MEAN_IOU'].update(mIoU)