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Advancements in Image Recognition: A Siamese Network Approach

Jiaqi Du, Wanshu Fu, Yi Zhang, Ziqi Wang

发表年份
2024
引用次数
3
访问权限
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摘要

In the realm of computer vision, image recognition serves as a pivotal task with extensive applications in intelligent security, autonomous driving, and robotics. Traditional methodologies for image recognition often grapple with computational inefficiencies and diminished accuracy in complex scenarios and extensive datasets. To address these challenges, an algorithm utilizing a siamese network architecture has been developed. This architecture leverages dual interconnected neural network submodules for the efficient extraction and comparison of image features. The effectiveness of this siamese network-based algorithm is demonstrated through its application to various benchmark datasets, where it consistently outperforms conventional approaches in terms of accuracy and processing speed. By employing weight-sharing techniques and optimizing neural network pathways, the proposed algorithm enhances the robustness and efficiency of image recognition tasks. The advancements presented in this study not only contribute to the theoretical understanding but also offer practical solutions, underscoring the significant potential and applicability of siamese networks in advancing image recognition technologies.

关键词

Computer scienceRobustness (evolution)Artificial intelligenceBenchmark (surveying)Artificial neural networkRoboticsImage (mathematics)Image processingMachine learningFeature extraction

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