#!/bin/bash # SAM-GSC 消融实验:EVA-CLIP-B/16 单卡调试 data_root=/opt/tiger/xiaomoguhzz/standard_coco pretrain_ckpt=/opt/tiger/xiaomoguhzz/EVA02_CLIP_B_psz16_s8B.pt exp_name=Debug_SAM-GSC_EVA-B_DINOv2-B_csa_560 vfm_type=dinov2-B dataset_type=ablation_sam version=ablation_sam mode=csa_vfm_distill # 单卡调试 CUDA_VISIBLE_DEVICES=0 python -m training.main \ --batch-size=2 \ --lr=1e-5 \ --wd=0.1 \ --epochs=1 \ --workers=2 \ --model EVA02-CLIP-B-16 \ --pretrained eva \ --warmup 100 \ --zeroshot-frequency 1 \ --dataset-type ${dataset_type} \ --test-type coco_panoptic \ --train-data ${data_root}/annotations/instances_train2017.json \ --val-data ${data_root}/annotations/panoptic_val2017.json \ --embed-path metadata/coco_panoptic_clip_hand_craft_EVACLIP_ViTB16.npy \ --train-image-root ${data_root}/train2017 \ --val-image-root ${data_root}/val2017 \ --cache-dir ${pretrain_ckpt} \ --log-every-n-steps 10 \ --lock-image \ --save-frequency 1 \ --lock-image-unlocked-groups 12 \ --name ${exp_name} \ --downsample-factor 16 \ --det-image-size 560 \ --val-segm-root ${data_root}/annotations/panoptic_val2017 \ --alpha 0.7 \ --mode ${mode} \ --use_vfm ${vfm_type} \ --loss_context_weight 0.25 \ --loss_content_weight 1.0 \ --loss_region_weight 0.05 \ --skip-first-eval \ --repa_layer_idx -1 \ --sd-refine-weight 0.3 \ --version ${version} \ --train-ratio 0.01