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Shark detection using optical image data from a mobile aerial platform

机译:使用来自移动式空中平台的光学图像数据进行鲨鱼检测

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Sharks are one of the major predators in the ocean. In particular, the great white shark is a primary threat to swimmers. This work proposes an automatic method for the recognition of deformable submerged objects (i.e. sharks) from aerial images of the coast line in an uncontrolled environment. It focuses on great white shark recognition in the surf zone of coastal areas. As the images were taken in an uncontrolled environment and the object shapes of interest are deformable, it is not easy to distinguish sharks from shark-like objects such as dolphins. In this paper, we propose two feature extraction methods that are based on the object's shape: the fish shape feature and shape profile methods. All feature extraction methods are applied to a new image database that contains aerial views of sharks and shark-like objects. The classifiers that are used in our proposed methods are the Support Vector Machine (SVM) and the feed-forward backpropagation neural network.
机译:鲨鱼是海洋中的主要捕食者之一。特别是,大白鲨是游泳者的主要威胁。这项工作提出了一种自动方法,用于在不受控制的环境中从海岸线的航拍图像识别可变形的水下物体(即鲨鱼)。它着重于沿海地区冲浪区的大白鲨识别。由于图像是在不受控制的环境中拍摄的,并且感兴趣的物体形状是可变形的,因此要区分鲨鱼和类似鲨鱼的物体(例如海豚)并不容易。在本文中,我们提出了两种基于对象形状的特征提取方法:鱼的形状特征和形状轮廓方法。所有特征提取方法都应用于一个新的图像数据库,该数据库包含鲨鱼和类似鲨鱼的物体的鸟瞰图。我们提出的方法中使用的分类器是支持向量机(SVM)和前馈反向传播神经网络。

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