基于深度实例分割的养鱼环境中鱼类检测与跟踪

Q2 Arts and Humanities
C. Arvind, R. Prajwal, Prithvi Bhat, A. Sreedevi, K. N. Prabhudeva
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引用次数: 14

摘要

本研究提出了一种检测和跟踪养鱼鱼类的新方法。一般来说,养鱼业涉及对自然或类似自然的人工栖息地(如内陆渔业)中的鱼类进行计数和监测,以进行繁殖、喂养和分类,这是一项具有挑战性的任务。目前,这些都是使用传统方法实现的,在大规模商业生产中实施时效率低下。为了克服这些困难并提高过程的效率,通过无人驾驶飞行器(UAV)上的视觉传感器在自然浑浊的水中捕获鱼类和鱼类种子的图像。本文采用深度实例分割算法Mask R-CNN和GOTURN跟踪算法对鱼类进行实时检测和跟踪。本文还对高分辨率图像上的鱼类检测(i)高分辨率图像多区域并行处理下的鱼类检测(ii)高分辨率图像多区域并行处理下的鱼类检测(iii)带跟踪的高分辨率图像多区域并行处理下的鱼类检测进行了对比研究。结果表明,采用图像多区域并行处理与跟踪相结合的方法得到的结果是准确的,在16帧/秒的陆地鱼类环境下,F1得分为0.91。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fish Detection and Tracking in Pisciculture Environment using Deep Instance Segmentation
This study presents a novel approach in detecting and tracking of fish in pisciculture. Pisciculture in general involves challenging tasks of counting and monitoring fish in natural or nature like, man-made habitats such as inland fisheries for breeding, feeding and sorting purposes. These are presently achieved using conventional methods that are inefficient when implemented in large-scale commercial productions. To overcome such difficulties and improve the efficiency of the processes, images of fish and fish seeds are captured in natural murky water habitats through a vision sensor on board an unmanned aerial vehicle (UAV). In this research paper, a deep instance segmentation algorithm called Mask R-CNN along with GOTURN tracking algorithm is employed for real time fish detection and tracking. A comparison study is also carried out (i) fish detection on high resolution images (ii) fish detection on high resolution image multi-region parallel processing (iii) fish detection on high resolution image multi-region parallel processing with tracking. The results are found to be accurate with image multi-region parallel processing along with tracking, with an F1 score of 0.91 at 16 frames per seconds on in-land fishes environment.
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来源期刊
Platonic Investigations
Platonic Investigations Arts and Humanities-Philosophy
CiteScore
0.30
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