Shark- eye:用于水下潜水监视的深度推理卷积神经网络鲨鱼检测

Niño E. Merencilla, Alvin Sarraga Alon, Glenn John O. Fernando, Elaine M. Cepe, Dennis C. Malunao
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引用次数: 10

摘要

人们担心水肺潜水的潜在危险,就像所有的运动一样,它也有危险。通常,人们认为鲨鱼和鲨鱼袭击是水肺潜水的危险,因为鲨鱼是海洋中最大的掠食者之一,尤其是大白鲨,是潜水员的主要威胁之一。该研究提出了一种用于水下潜水监视的深度学习鲨鱼检测方法。该系统在水下使用了大量大白鲨的数据集进行训练,因为在水下环境中,鲨鱼很难与其他鲨鱼等动物区分开来。研究中使用了一种YOLOv3算法,该算法使用卷积神经网络进行对象检测、多尺度预测和通过使用逻辑回归进行边界盒预测。并利用这种方法对鲨鱼检测系统进行了测试,取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Shark-EYE: A Deep Inference Convolutional Neural Network of Shark Detection for Underwater Diving Surveillance
People are anxious about the potential dangers of scuba diving and like in all sports, there are dangers involved in it. Typically, people think sharks and shark attacks are the dangers of scuba diving, as sharks are one of the ocean's biggest predators, and the great white shark, in particular, is one of the primary threats to divers. The study proposes a deep learning approach to shark detection for underwater diving surveillance. A large collection of great white sharks’ datasets underwater is used by the system for training as sharks are hard to differentiate from other sharks like animals in an underwater environment. A YOLOv3 algorithm that uses convolutional neural networks for object detection, multiscale prediction, and bounding box prediction through the use of logistic regression is used in the study. And with this approach, the testing of the shark detection system generates a good result.
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