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Tracking Fish Abundance by Underwater Image Recognition

机译:通过水下图像识别跟踪鱼的丰度

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摘要

Marine cabled video-observatories allow the non-destructive sampling of species at frequencies and durations that have never been attained before. Nevertheless, the lack of appropriate methods to automatically process video imagery limits this technology for the purposes of ecosystem monitoring. Automation is a prerequisite to deal with the huge quantities of video footage captured by cameras, which can then transform these devices into true autonomous sensors. In this study, we have developed a novel methodology that is based on genetic programming for content-based image analysis. Our aim was to capture the temporal dynamics of fish abundance. We processed more than 20,000 images that were acquired in a challenging real-world coastal scenario at the OBSEA-EMSO testing-site. The images were collected at 30-min. frequency, continuously for two years, over day and night. The highly variable environmental conditions allowed us to test the effectiveness of our approach under changing light radiation, water turbidity, background confusion, and bio-fouling growth on the camera housing. The automated recognition results were highly correlated with the manual counts and they were highly reliable when used to track fish variations at different hourly, daily, and monthly time scales. In addition, our methodology could be easily transferred to other cabled video-observatories.
机译:海上有线视频观测站可以以前所未有的频率和持续时间对物种进行无损采样。然而,由于缺乏适当的方法来自动处理视频图像,因此出于生态系统监控的目的而限制了该技术。自动化是处理摄像机捕获的大量视频素材的先决条件,然后可以将这些设备转换为真正的自主传感器。在这项研究中,我们已经开发了一种基于基因编程的新方法,用于基于内容的图像分析。我们的目的是捕获鱼类丰度的时间动态。我们在OBSEA-EMSO测试现场处理了20,000幅图像,这些图像是在具有挑战性的现实沿海场景中获取的。在30分钟时收集图像。频率,连续两年,昼夜不停。高度可变的环境条件使我们能够在变化的光辐射,水浑浊,背景混乱以及相机机壳上生物污垢增长的情况下测试该方法的有效性。自动识别结果与手动计数高度相关,当用于跟踪每小时,每天和每月不同时间尺度的鱼类变化时,它们的可靠性很高。此外,我们的方法可以轻松地转移到其他有线视频观测站。

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