Faster R-CNN for Marine Organism Detection and Recognition Using Data Augmentation

Hao Zhou, Hai Huang, Xu Yang, Lu Zhang, Lu Qi
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引用次数: 19

Abstract

Recently, Faster Region-based CNN(Faster R-CNN) has achieved marvelous accomplishment in object detection and recognition. In this paper, Faster R-CNN is applied to marine organism detection and recognition. However, the training of Faster R-CNN requires a mass of labeled samples which are difficult to obtain for marine organism. Therefore, three data augmentation methods are proposed dedicated to underwater-imaging. Specifically, the inverse process of underwater image restoration is used to simulate different marine turbulence environments. Perspective transformation is proposed to simulate different view of camera shooting. Illumination synthesis is used to simulate different marine illuminating environments. The performance of each data augmentation method, together with Faster R-CNN is evaluated by experiments on real world underwater dataset, which validate the effectiveness of the proposed method for marine organism detection and recognition.
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使用数据增强的更快R-CNN海洋生物检测和识别
近年来,Faster Region-based CNN(Faster R-CNN)在目标检测和识别方面取得了令人瞩目的成就。本文将Faster R-CNN应用于海洋生物的检测与识别。然而,Faster R-CNN的训练需要大量的标记样本,这对于海洋生物来说是很难获得的。为此,提出了三种针对水下成像的数据增强方法。具体来说,利用水下图像的逆恢复过程来模拟不同的海洋湍流环境。为了模拟摄像机拍摄的不同视角,提出了视角变换方法。照明合成用于模拟不同的海洋照明环境。通过在真实水下数据集上的实验,对每种数据增强方法以及Faster R-CNN的性能进行了评估,验证了所提方法用于海洋生物检测和识别的有效性。
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