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A Modular Learning Approach for Fish Counting and Measurement Using Stereo Baited Remote Underwater Video

机译:基于立体声诱饵远程水下视频的鱼类计数和测量的模块化学习方法

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An approach is suggested for automating fish identification and measurement using stereo Baited Remote Underwater Video footage. Simple methods for identifying fish are not sufficient for measurement, since the snout and tail points must be found, and the stereo data should be incorporated to find a true measurement. We present a modular framework that ties together various approaches in order to develop a generalised system for automated fish detection. A method is also suggested for using machine learning to improve identification. Experimental results indicate the suitability of our approach.
机译:建议使用立体声诱饵远程水下视频镜头自动化鱼类识别和测量方法。识别鱼类的简单方法是不足以进行测量的,因为必须找到鼻子和尾部点,并且应纳入立体数据以找到真正的测量。我们提出了一种模块化框架,将各种方法连接在一起,以开发用于自动鱼类检测的广义系统。还建议使用机器学习来提高识别方法。实验结果表明我们的方法适用。

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