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STEm-Seg: Spatio-temporal Embeddings for Instance Segmentation in Videos
Ali Athar Sabarinath Mahadevan Aljoša Ošep Laura Leal-Taixé Bastian Leibe

Abstract
Existing methods for instance segmentation in videos typically involve multi-stage pipelines that follow the tracking-by-detection paradigm and model a video clip as a sequence of images. Multiple networks are used to detect objects in individual frames, and then associate these detections over time. Hence, these methods are often non-end-to-end trainable and highly tailored to specific tasks. In this paper, we propose a different approach that is well-suited to a variety of tasks involving instance segmentation in videos. In particular, we model a video clip as a single 3D spatio-temporal volume, and propose a novel approach that segments and tracks instances across space and time in a single stage. Our problem formulation is centered around the idea of spatio-temporal embeddings which are trained to cluster pixels belonging to a specific object instance over an entire video clip. To this end, we introduce (i) novel mixing functions that enhance the feature representation of spatio-temporal embeddings, and (ii) a single-stage, proposal-free network that can reason about temporal context. Our network is trained end-to-end to learn spatio-temporal embeddings as well as parameters required to cluster these embeddings, thus simplifying inference. Our method achieves state-of-the-art results across multiple datasets and tasks. Code and models are available at https://github.com/sabarim/STEm-Seg.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| unsupervised-video-object-segmentation-on-4 | STEm-Seg | F-measure (Mean): 67.8 F-measure (Recall): 75.5 Ju0026F: 64.7 Jaccard (Mean): 61.5 Jaccard (Recall): 70.4 |
| video-instance-segmentation-on-youtube-vis-1 | STEm-Seg (ResNet-101) | AP50: 55.8 AP75: 37.9 AR1: 34.4 AR10: 41.6 mask AP: 34.6 |
| video-instance-segmentation-on-youtube-vis-1 | STEm-Seg (ResNet-50) | AP50: 50.7 AP75: 37.9 AR1: 34.4 AR10: 41.6 mask AP: 30.6 |
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