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A Novel Approach for Real-Time Vehicle Re-identification Using Content-Based Image Retrieval with Relevance Feedback

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Machine Learning and Big Data Analytics (ICMLBDA 2022)

Abstract

Automated smart traffic surveillance systems constitute a significant part of smart city environments and have attracted significant research attention in recent years. Vehicle re-identification is a major challenge in automated traffic surveillance systems in smart city environments. Vehicle re-identification is the process of retrieving instances of the target vehicle given a gallery of numerous vehicle images. Though multiple models were proposed to perform the task of vehicle re-identification, the models struggle in terms of real-world implementation because of their complexity and computational requirements. This is mainly due to the focus on computation-heavy feature extraction processes, along with complex pre-processing and post-processing steps. To address these issues, an approach incorporating content-based image retrieval techniques with deep neural models that are computationally efficient is proposed. The approach also considers relevance feedback during the post-processing phase. Experimental results reveal that the incorporation of relevance feedback technique as a post-processing technique in vehicle re-identification helps achieve significant improvement in terms of mean average precision and Rank@k.

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Shankaranarayan, N., Sowmya Kamath, S. (2023). A Novel Approach for Real-Time Vehicle Re-identification Using Content-Based Image Retrieval with Relevance Feedback. In: Misra, R., Omer, R., Rajarajan, M., Veeravalli, B., Kesswani, N., Mishra, P. (eds) Machine Learning and Big Data Analytics. ICMLBDA 2022. Springer Proceedings in Mathematics & Statistics, vol 401. Springer, Cham. https://doi.org/10.1007/978-3-031-15175-0_16

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