2024
DOI: 10.1088/1742-6596/2759/1/012001
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Heterogeneous Feature Fusion for Improving Performance of Action Detection

Yasunori Babazaki,
Kota Iwamoto,
Katsuhiko Takahashi
et al.

Abstract: We present a novel framework aimed at improving video action detection through the integration of heterogeneous features. Conventional action detection methods which focus on modeling the relationships between person/object instances rely exclusively on video features and do not exploit valuable intra-instance heterogeneous features, such as person pose, positional information or object category, that can support action recognition. Our proposed framework, termed Heterogeneous Feature Fusion (HFF) framework, a… Show more

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