NAVERO: Unlocking Fine-Grained Semantics for Video-Language Compositionality
We study the capability of Video-Language (VidL) models in understanding compositions between objects, attributes, actions and their relations. Composition understanding becomes particularly challenging for video data since the compositional relations rapidly change over time in videos. We first bui...
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Zusammenfassung: | We study the capability of Video-Language (VidL) models in understanding
compositions between objects, attributes, actions and their relations.
Composition understanding becomes particularly challenging for video data since
the compositional relations rapidly change over time in videos. We first build
a benchmark named AARO to evaluate composition understanding related to actions
on top of spatial concepts. The benchmark is constructed by generating negative
texts with incorrect action descriptions for a given video and the model is
expected to pair a positive text with its corresponding video. Furthermore, we
propose a training method called NAVERO which utilizes video-text data
augmented with negative texts to enhance composition understanding. We also
develop a negative-augmented visual-language matching loss which is used
explicitly to benefit from the generated negative text. We compare NAVERO with
other state-of-the-art methods in terms of compositional understanding as well
as video-text retrieval performance. NAVERO achieves significant improvement
over other methods for both video-language and image-language composition
understanding, while maintaining strong performance on traditional text-video
retrieval tasks. |
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DOI: | 10.48550/arxiv.2408.09511 |