MobileVOS: Real-Time Video Object Segmentation Contrastive Learning meets Knowledge Distillation
About
This paper tackles the problem of semi-supervised video object segmentation on resource-constrained devices, such as mobile phones. We formulate this problem as a distillation task, whereby we demonstrate that small space-time-memory networks with finite memory can achieve competitive results with state of the art, but at a fraction of the computational cost (32 milliseconds per frame on a Samsung Galaxy S22). Specifically, we provide a theoretically grounded framework that unifies knowledge distillation with supervised contrastive representation learning. These models are able to jointly benefit from both pixel-wise contrastive learning and distillation from a pre-trained teacher. We validate this loss by achieving competitive J&F to state of the art on both the standard DAVIS and YouTube benchmarks, despite running up to 5x faster, and with 32x fewer parameters.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Video Object Segmentation | DAVIS 2017 (val) | J mean82.3 | 1130 | |
| Video Object Segmentation | DAVIS 2016 (val) | J Mean90.3 | 564 | |
| Video Object Segmentation | YouTube-VOS 2018 (val) | -- | 493 | |
| Video Object Segmentation | YouTube-VOS 2019 (val) | J-Score (Seen)83.2 | 231 |