OpenTAD_Save / OpenTAD /configs /gtad /thumos_i3d.py
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_base_ = [
"../_base_/datasets/thumos-14/features_i3d_sw.py", # dataset config
"../_base_/models/gtad.py", # model config
]
window_size = 256
dataset = dict(
train=dict(
window_size=window_size,
window_overlap_ratio=0.5,
ioa_thresh=0.9,
),
val=dict(
window_size=window_size,
window_overlap_ratio=0.5,
ioa_thresh=0.9,
),
test=dict(
window_size=window_size,
window_overlap_ratio=0.5,
),
)
model = dict(
projection=dict(in_channels=2048),
roi_head=dict(
proposal_generator=dict(dscale=64, tscale=256),
proposal_roi_extractor=dict(dscale=64, tscale=256, roi_size=16, context_size=16),
proposal_head=dict(kernel_size=3),
),
)
solver = dict(
train=dict(batch_size=8, num_workers=4),
val=dict(batch_size=8, num_workers=4),
test=dict(batch_size=8, num_workers=4),
clip_grad_norm=1,
)
optimizer = dict(type="Adam", lr=1e-4, weight_decay=1e-4)
scheduler = dict(type="MultiStepLR", milestones=[5], gamma=0.1, max_epoch=8)
inference = dict(load_from_raw_predictions=False, save_raw_prediction=False)
post_processing = dict(
nms=dict(
use_soft_nms=True,
sigma=0.3,
max_seg_num=200,
min_score=0.0001,
multiclass=False,
voting_thresh=0.95, # set 0 to disable
),
external_cls=dict(
type="UntrimmedNetTHUMOSClassifier",
path="data/thumos-14/classifiers/uNet_test.npy",
topk=2,
),
save_dict=False,
)
workflow = dict(
logging_interval=200,
checkpoint_interval=1,
val_loss_interval=-1,
val_eval_interval=1,
val_start_epoch=5,
)
work_dir = "exps/thumos/gtad_i3d_sw256"