Work place: Department of Electronics and Communication Engineering, The ICFAI University, Raipur, Chattisgarh, India
E-mail: kishorekamarajugadda@gmail.com
Website: https://orcid.org/0000-0002-6286-1186
Research Interests:
Biography
KishoreKumar Kamara jugadda received his B.E. in Electronics and Communication Engineering from Nagarjuna University, his M.Tech in Digital Systems and Computer Electronics from JNTU Anantapur, and his Ph.D. in Electronics and Communication Engineering from GITAM University, Visakhapatnam. He is currently a Professor and Dean Academics at The ICFAI University, Raipur, with over 21 years of experience. He has published 36 research papers, presented 11 papers, filed 3 patents, and completed 2 funded projects, along with organizing multiple FDPs and guest lectures. He is a Senior Member IEEE, FIE, and MIETE, with research interests in electronics and communication engineering, digital systems, and wireless communication.
By Devesh Kumar Srivastava Chirag Goel K. Kishore Kumar Akhilesh Kumar Sharma Babu R. Dawadi Eshaan Saha
DOI: https://doi.org/10.5815/ijem.2026.02.06, Pub. Date: 8 Apr. 2026
This research focuses on object detection using Convolutional Neural Networks (CNN) applied to underwater image datasets. Underwater images often suffer from issues such as low clarity and quality, which pose challenges for accurate object identification. To address this, the research employs image enhancement techniques, including image illumination methods, to improve image quality and facilitate object detection algorithms. Subsequently, the study developed algorithms capable of detecting objects and accurately predicting their categories. The primary objective is to achieve optimal accuracy and efficiency in underwater recognition. This research utilizes Machine Learning techniques through Tensor Flow and Image Processing to accomplish underwater object detection. Deep learning techniques, particularly feature learning, object classification, and detection, have gained significant attention and momentum. In this research we implemented different image enhancement techniques on dataset and evaluated their performance. While one metric, IQI (Image Quality Index), slightly favoured histogram equalization (HE), the other three metrics strongly favoured the enhanced version of HE known as Contrast Limited Adaptive Histogram Equalization (CLAHE).
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