Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Temporal Gaussian Mixture Layer for Videos

About

We introduce a new convolutional layer named the Temporal Gaussian Mixture (TGM) layer and present how it can be used to efficiently capture longer-term temporal information in continuous activity videos. The TGM layer is a temporal convolutional layer governed by a much smaller set of parameters (e.g., location/variance of Gaussians) that are fully differentiable. We present our fully convolutional video models with multiple TGM layers for activity detection. The extensive experiments on multiple datasets, including Charades and MultiTHUMOS, confirm the effectiveness of TGM layers, significantly outperforming the state-of-the-arts.

AJ Piergiovanni, Michael S. Ryoo• 2018

Related benchmarks

TaskDatasetResultRank
Activity DetectionCharades localize v1
mAP22.3
52
Activity DetectionMLB-YouTube (test)
mAP47.1
51
Temporal Action LocalizationMultiTHUMOS
f-mAP46.4
20
Activity DetectionCharades (test)
mAP22.3
19
Activity DetectionMultiTHUMOS
mAP46.4
16
Action DetectionMultiTHUMOS
mAPAC40.7
16
Temporal Activity DetectionCharades v1_localize (val)
mAP22.3
15
Multi-label Temporal Action LocalizationCharades per-frame 51
mAP22.3
14
Multi-label Temporal Action SegmentationCharades 1.0 (test)
Seg-mAP21.5
14
Temporal Action DetectionMultiTHUMOS--
12
Showing 10 of 20 rows

Other info

Code

Follow for update