| _base_ = [ |
| "../_base_/datasets/activitynet-1.3/features_tsp_resize.py", |
| "../_base_/models/bmn.py", |
| ] |
|
|
| model = dict(projection=dict(in_channels=512)) |
|
|
| solver = dict( |
| train=dict(batch_size=16, num_workers=4), |
| val=dict(batch_size=16, num_workers=4), |
| test=dict(batch_size=16, num_workers=4), |
| clip_grad_norm=1, |
| ) |
|
|
| optimizer = dict(type="Adam", lr=1e-3, weight_decay=1e-4, paramwise=True) |
| scheduler = dict(type="MultiStepLR", milestones=[7], gamma=0.1, max_epoch=10) |
|
|
| inference = dict(test_epoch=7, load_from_raw_predictions=False, save_raw_prediction=False) |
| post_processing = dict( |
| nms=dict( |
| use_soft_nms=True, |
| sigma=0.5, |
| max_seg_num=100, |
| min_score=0.01, |
| multiclass=False, |
| voting_thresh=0.95, |
| ), |
| external_cls=dict( |
| type="CUHKANETClassifier", |
| path="data/activitynet-1.3/classifiers/cuhk_val_simp_7.json", |
| topk=2, |
| ), |
| save_dict=False, |
| ) |
|
|
| workflow = dict( |
| logging_interval=200, |
| checkpoint_interval=1, |
| val_loss_interval=1, |
| val_eval_interval=1, |
| val_start_epoch=7, |
| ) |
|
|
| work_dir = "exps/anet/bmn_tsp_128" |
|
|