Robust 3D Shape Classification Method using Simulated Multi View Sonar Images and Convolutional Nueral Network

Meungsuk Lee, Jason Kim, Son-cheol Yu
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引用次数: 3

Abstract

Object detection and classification in the water enhances not only the application of the autonomous underwater vehicle(AUV) but also localization of the AUV. Object detection and classification using sonar images are challenging problems due to low resolution and low signal-to-noise ratio. In this paper, we propose shape classification method using multi-view sonar images for AUV. To train multi-view of sonar images, we used network which is connected in parallel with convolutional neural network(CNN). We used Alex-net for the basic CNN model. The extracted features by the CNN are collected through the pooling layer and connected to the fully connected layer to classify the shape. To overcome the lack of training data, sonar simulator was used to generate data set. As a result, 6 shape are well classified and also shows possibility for the recognition of the real sonar images acquired in water tank.
基于模拟多视点声纳图像和卷积神经网络的鲁棒三维形状分类方法
水下目标的检测与分类不仅提高了自主水下航行器的应用,而且提高了自主水下航行器的定位。由于低分辨率和低信噪比,利用声纳图像进行目标检测和分类是一个具有挑战性的问题。本文提出了一种基于多视点声纳图像的水下航行器形状分类方法。为了训练多视点声纳图像,我们采用了与卷积神经网络(CNN)并行连接的网络。我们使用Alex-net作为基本的CNN模型。CNN提取的特征通过池化层收集,连接到全连接层对形状进行分类。为了克服训练数据的不足,利用声纳模拟器生成数据集。结果表明,6个形状分类良好,也显示了对水箱中获取的真实声纳图像识别的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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