Surveillance System for Illegal Fishing Prevention on UAV Imagery Using Computer Vision

Agus Prayudi, I. A. Sulistijono, Anhar Risnumawan, Zaqiatud Darojah
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引用次数: 8

Abstract

Indonesia has a vast ocean with an abundance of fishes with its natural environments. Those abundances have to be conserved to prevent further destruction of the environment, which can result in the extinction of the surrounding living things. The government had deployed a vessel monitoring system, but illegal fishing still hardly been controlled. In this paper, toward conserving the fishes and especially the environment, we present a surveillance system framework from aerial images using drones technology. We develop a surveillance system using only visual information from the camera installed on the UAV and the design of the convolutional layer for accurate detection. Parameters are learned automatically without manually hand-tuned parameters because the learning process is pure from visual data that learned, so that makes the surveillance and investigation process easier. Experiment show relatively well that the proposed method successfully reaches Average Precision (AP)=75.03%, and hull plate classification reaches Average Matching Precision (AMP)=96.44%, and we believe it could bring many benefits for the ministry of fisheries and marine affairs Indonesia for identifying the illegal vessels and reduce the number of illegal fishing.
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基于计算机视觉的无人机图像防非法捕捞监控系统
印度尼西亚拥有广阔的海洋和丰富的鱼类和自然环境。这些丰富的资源必须得到保护,以防止进一步破坏环境,否则可能导致周围生物的灭绝。政府已经部署了船只监控系统,但非法捕鱼仍然难以控制。为了保护鱼类,特别是保护环境,我们提出了一种利用无人机技术的航拍图像监测系统框架。我们开发了一个监控系统,仅使用安装在无人机上的摄像机的视觉信息和卷积层的设计来进行准确的检测。参数是自动学习的,不需要手动调整参数,因为学习过程完全来自学习的视觉数据,这使得监视和调查过程更容易。实验结果表明,该方法能较好地达到平均精度(AP)=75.03%,船板分类平均匹配精度(AMP)=96.44%,为印尼渔业和海洋部识别非法船只和减少非法捕捞数量带来诸多好处。
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