Sixteenth International Conference on Quality Control by Artificial Vision 2023
DOI: 10.1117/12.2688330
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Automated fish detection and classification on sonar images using detection transformer and YOLOv7

Abstract: In order to maintain a healthy ecosystem and fish stocks, it is necessary to monitor the abundance and frequency of fish species. In this article, we propose a fish detection and classification system. In the first step, the images were extracted from a public Ocqueoc River DIDSON high-resolution imaging sonar dataset and annotated. End-to-end object detection models, Detection Transformer with a ResNet-50 backbone (DETR-ResNet-50) and YOLOv7 were used to detect and classify fish species. With a mean average p… Show more

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