Semantic Reasoning in Zero Example Video Event Retrieval

Author:

Boer Maaike H. T. De1,Lu Yi-Jie2,Zhang Hao2,Schutte Klamer3,Ngo Chong-Wah2,Kraaij Wessel4

Affiliation:

1. TNO and Radboud University, The Netherlands

2. City University of Hong Kong, Hong Kong

3. TNO Netherlands

4. TNO and Leiden University, The Netherlands

Abstract

Searching in digital video data for high-level events, such as a parade or a car accident, is challenging when the query is textual and lacks visual example images or videos. Current research in deep neural networks is highly beneficial for the retrieval of high-level events using visual examples, but without examples it is still hard to (1) determine which concepts are useful to pre-train ( Vocabulary challenge ) and (2) which pre-trained concept detectors are relevant for a certain unseen high-level event ( Concept Selection challenge ). In our article, we present our Semantic Event Retrieval System which (1) shows the importance of high-level concepts in a vocabulary for the retrieval of complex and generic high-level events and (2) uses a novel concept selection method ( i-w2v ) based on semantic embeddings. Our experiments on the international TRECVID Multimedia Event Detection benchmark show that a diverse vocabulary including high-level concepts improves performance on the retrieval of high-level events in videos and that our novel method outperforms a knowledge-based concept selection method.

Funder

Research Grants Council of the Hong Kong Special Administrative Region, China

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture

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1. (Un)likelihood Training for Interpretable Embedding;ACM Transactions on Information Systems;2023-12-30

2. Semantics aware intelligent framework for content-based e-learning recommendation;Natural Language Processing Journal;2023-06

3. Interactive Search vs. Automatic Search;ACM Transactions on Multimedia Computing, Communications, and Applications;2021-06

4. Zero-Shot Video Event Detection with High-Order Semantic Concept Discovery and Matching;IEEE Transactions on Multimedia;2021

5. Coarse-to-Fine Semantic Alignment for Cross-Modal Moment Localization;IEEE Transactions on Image Processing;2021

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