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International Journal of Research in Engineering
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Vol. 7, Special Issue 2 (2025)

Enhanced object detection in video streams using deep learning and RCNN Architectures

Author(s):

Anju J Prakash

Abstract:

As a consequence of the digital era and, more specifically, videos, such as television archiving and video surveillance, a tremendous quantity of data is created each and every day. This is particularly true of videos. If we want to keep control over this material and make it accessible for analysis, categorization, and a number of other applications, it is evident that we will need algorithms that are capable of doing this work in a timely and efficient manner. The proposed approach makes it possible to do an analysis of video clips by making use of deep learning methods. The main objective of this study is to design an object detection architecture that is more precise than existing methods. Object detection is a method that can recognize and detect a variety of elements that are visible in an image or video and label them in order to categorize these objects. This may be accomplished via the use of computer software. Deep learning object recognition is a technique that is both rapid and accurate in its ability to anticipate the location of an item inside a picture. This technology has the potential to be beneficial in a number of contexts. RCNN is one of the innovative approaches that may be utilized in conjunction with deep learning to detect objects.

Pages: 11-15  |  103 Views  17 Downloads

How to cite this article:
Anju J Prakash. Enhanced object detection in video streams using deep learning and RCNN Architectures. Int. J. Res. Eng. 2025;7(2):11-15. DOI: 10.33545/26648776.2025.v7.i2a.108
International Journal of Research in Engineering

International Journal of Research in Engineering

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