_base_ = './base_config.py' # model settings # 使用TinyCLIP+ProxyCLIP模型进行分割 # 模型: TinyCLIP-ViT-39M-16-Text-19M # VFM: DINO-B-8 # 模式: proxyclip model = dict( name_path="configs/proxyclip/cls_context60.txt", vfm_model="dino-B-8", # Options: 'sam-B', 'sam-L', 'dinov2-B', 'dinov2-L', 'dino-B-8', 'dino-B-16' type="TinyCLIPProxySegmentation", clip_type="TinyCLIP-ViT-39M-16-Text-19M", checkpoint="/mnt/SSD8T/home/wjj/code/DeCLIP_private/checkpoints/TinyCLIP-ViT-39M-16-Text-19M-YFCC15M.pt", mode="proxyclip", # Use proxyclip mode beta=1.2, # ProxyCLIP beta parameter gamma=3.0, # ProxyCLIP gamma parameter prob_thd=0.15, logit_scale=40, slide_stride=112, slide_crop=336, ) # dataset settings dataset_type = "PascalContext60Dataset" data_root = "/mnt/SSD8T/home/wjj/dataset/VOCdevkit/VOC2010" test_pipeline = [ dict(type="LoadImageFromFile"), dict(type="Resize", scale=(2048, 336), keep_ratio=True), dict(type="LoadAnnotations"), dict( type="PackSegInputs", meta_keys=( "img_path", "seg_map_path", "ori_shape", "img_shape", "pad_shape", "scale_factor", "flip", "flip_direction", "reduce_zero_label", "resize_shape", ), ), ] test_dataloader = dict( batch_size=1, num_workers=4, persistent_workers=True, sampler=dict(type="DefaultSampler", shuffle=False), dataset=dict( type=dataset_type, data_root=data_root, data_prefix=dict( img_path="JPEGImages", seg_map_path="SegmentationClassContext" ), ann_file="ImageSets/SegmentationContext/val.txt", pipeline=test_pipeline, ), )