EgoCVR: An Egocentric Benchmark for Fine-Grained Composed Video Retrieval

Thomas Hummel*, Shyamgopal Karthik, Mariana-Iuliana Georgescu, Zeynep Akata ;

Abstract


"In Composed Video Retrieval, a video and a textual description which modifies the video content are provided as inputs to the model. The aim is to retrieve the relevant video with the modified content from a database of videos. In this challenging task, the first step is to acquire large-scale training datasets and collect high-quality benchmarks for evaluation. In this work, we introduce , a new evaluation benchmark for fine-grained Composed Video Retrieval using large-scale egocentric video datasets. consists of 2,295 queries that specifically focus on high-quality temporal video understanding. We find that existing Composed Video Retrieval frameworks do not achieve the necessary high-quality temporal video understanding for this task. To address this shortcoming, we adapt a simple training-free method, propose a generic re-ranking framework for Composed Video Retrieval, and demonstrate that this achieves strong results on . Our code and benchmark are freely available at https://github.com/ ExplainableML/EgoCVR."

Related Material


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