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Shark Detection from Aerial Imagery Using Region-Based CNN, a Study

机译:一项基于地区的CNN,从空中图像检测鲨鱼检测

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Shark attacks have been a very sensitive issue for Australians and many other countries. Thus, providing safety and security around beaches is very fundamental in the current climate. Safety for both human beings and underwater creatures (sharks, whales, etc.) in general is essential while people continue to visit and use the beaches heavily for recreation and sports. Hence, an efficient, automated and real-time monitoring approach on beaches for detecting various objects (e.g. human activities, large fish, sharks, whales, surfers, etc.) is necessary to avoid unexpected casualties and accidents. The use of technologies such as drones and machine learning techniques are promising directions in such challenging circumstances. This paper investigates the potential of Region-based Convolutional Neural Networks (R-CNN) for detecting various marine objects, and Sharks in particular. Three network architectures namely Zeiler and Fergus (ZF), Visual Geometry Group (VGG16), and VGG_M were considered for analysis and identifying their potential. A dataset consisting of 3957 video frames were used for experiments. VGG16 architecture with faster-R-CNN performed better than others, with an average precision of 0.904 for detecting Sharks.
机译:鲨鱼袭击对澳大利亚人和许多其他国家来说都是一个非常敏感的问题。因此,在目前的气候中提供海滩周围的安全性和安全性。人类和水下生物(鲨鱼,鲸鱼等)的安全通常是必不可少的,而人们则继续访问并使用海滩,以便娱乐和运动。因此,需要一种用于检测各种物体的高效,自动化和实时监测方法(例如,人类活动,大鱼,鲨鱼,鲸鱼,冲浪者等)是避免意外伤亡和事故的必要条件。在这种挑战性的情况下,使用诸如无人机和机器学习技术的技术是有希望的方向。本文研究了基于区域的卷积神经网络(R-CNN)的潜力,用于检测各种海洋物体,特别是鲨鱼。三个网络架构即插入iler和Fergus(ZF),视觉几何组(VGG16)和VGG_M被认为进行分析和识别其潜力。由3957个视频帧组成的数据集用于实验。 VGG16架构具有比其他R-CNN更好的更好,平均精度为0.904,用于检测鲨鱼。

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