2024
DOI: 10.31181/dma21202428
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Marine Object Detection using YOLOv4 Adapted Convolutional Neural Network

Muhammad Daniyal Baig,
Hafiz Burhan Ul Haq

Abstract: This research presents an innovative application of the YOLOv4 object detection model for the identification and classification of marine objects within a dataset encompassing seven distinct classes. The study focuses on enhancing the robustness and accuracy of object detection in challenging marine environments, leveraging the unique capabilities of YOLOv4. Pre-processing steps involve resizing raw images, applying data augmentations, and normalizing pixel values to ensure optimal model training. Specifically… Show more

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