Rate the Article: Automated Object Detection and Classification using Krill Herd Algorithm with Deep Learning on Surveillance Videos, IJSR, Call for Papers, Online Journal
International Journal of Science and Research (IJSR)

International Journal of Science and Research (IJSR)
Call for Papers | Fully Refereed | Open Access | Double Blind Peer Reviewed

ISSN: 2319-7064

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Research Paper | Computer Science and Information Technology | India | Volume 12 Issue 10, October 2023 | Rating: 5.4 / 10


Automated Object Detection and Classification using Krill Herd Algorithm with Deep Learning on Surveillance Videos

V. Saikrishnan, Dr. M. Karthikeyan


Abstract: In the domain of video surveillances, the implementation of deep learning (DL) for object detection and classification is developed as a game-changer. This paper introduces a comprehensive solution integrating the power of DL methods to handle these fundamental tasks. Leveraging state-of-the-art neural networks (NN), our technique allows consistent object identification and categorization within surveillance videos, providing improved security, real-time context awareness, and enriched decision-making abilities. This study develops an Automated Object Detection and Classification using Krill Herd Algorithm with Deep Learning (AODC-KHADL) technique on Surveillance Videos. The introduced AODC-KHADL method efficiently detects and classifies the objects into numerous categories. This technique starts with the incorporation of YOLO-v5, a recent object detection method popular for its excellent accuracy and speed for identifying objects in videos and images. For enhancing YOLO-v5's detection potential, we utilize Random Vector Functional Link (RVFL) classification, a multipurpose and robust machine learning (ML) approach. In this context, we present the Krill Herd Algorithm (KHA), a nature-inspired optimization method inspired by the collective behavior of krill swarms. By using extensive examination and assessment, we exhibit the model's capability in real-time video surveillance applications. The simulation values of the AODC-KHADL technique are tested on benchmark video and it is emphasized the higher performance of the AODC-KHADL system with other models.


Keywords: Object classification; Video surveillance; Object detection; Krill Herd Algorithm; Deep learning


Edition: Volume 12 Issue 10, October 2023,


Pages: 86 - 92



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