Bridging Images and Videos: A Simple Learning Framework for Large Vocabulary Video Object Detection

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Scaling object taxonomies is one of the important steps toward a robust real-world deployment of recognition systems. We have faced remarkable progress in images since the introduction of the LVIS benchmark. To continue this success in videos, a new video benchmark, TAO, was recently presented. Given the recent encouraging results from both detection and tracking communities, we are interested in marrying those two advances and building a strong large vocabulary video tracker. However, supervisions in LVIS and TAO are inherently sparse or even missing, posing two new challenges for training the large vocabulary trackers. First, no tracking supervisions are in LVIS, which leads to inconsistent learning of detection (with LVIS and TAO) and tracking (only with TAO). Second, the detection supervisions in TAO are partial, which results in catastrophic forgetting of absent LVIS categories during video fine-tuning. To resolve these challenges, we present a simple but effective learning framework that takes full advantage of all available training data to learn detection and tracking while not losing any LVIS categories to recognize. With this new learning scheme, we show that consistent improvements of various large vocabulary trackers are capable, setting strong baseline results on the challenging TAO benchmarks.
Publisher
European Conference on Computer Vision
Issue Date
2022-10-27
Language
English
Citation

European Conference on Computer Vision, ECCV 2022, pp.238 - 258

DOI
10.1007/978-3-031-19806-9_14
URI
http://hdl.handle.net/10203/301191
Appears in Collection
EE-Conference Papers(학술회의논문)
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