基于GVF蛇形矩和泽尼克矩的水下目标识别

Guo Tao, M. Azimi-Sadjadi, A. Nevis
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引用次数: 7

摘要

本文主要研究了基于光电图像数据的水目标自动分类识别的鲁棒目标分割和形状相关特征提取方法。用于获取数据的传感器是条纹管成像激光雷达(STIL),它提供高分辨率的距离和对比度图像。本文采用梯度矢量流(GVF)蛇形分割检测目标。蛇收敛到实际的物体边界,并提供一个封闭的轮廓的对象,即使一些边缘缺失。为了减少边缘缺失造成的畸变,实现了二值轮廓与距离图像的结合。然后计算被分割对象的合并轮廓的泽尼克矩。这些矩提供了具有高度区分能力的形状相关特征,对图像中物体的旋转、平移和大小缩放不影响。然后将这组特征用于从静止图像数据中识别目标。为了帮助区分具有潜在相似形状依赖特征的不同物体,还在封闭轮廓内计算对比度和距离图像的均值和方差,然后将其用作分类的附加特征。然后将提取的特征应用到多层反向传播神经网络(BPNN)中进行目标分类/识别。尝试了不同的神经网络结构来确定最优分类器。在多个数据集上验证了所开发算法的有效性,并开发了相应的混淆矩阵。
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Underwater target identification using GVF snake and zernike moments
This paper is focused on the development of robust object segmentation and shape-dependent feature extraction methods for automatic water target classification and identification using electro-optical imagery data. The sensor used for acquiring the data is the Streak Tube Imaging Lidar (STIL) that offers both range and contrast images with high resolution. In this paper, the gradient vector flow (GVF) snake is employed to segment the detected objects. The snake converges to the actual object boundary and provides a closed contour of the object even when some of the edges are missing. To reduce the distortion as a result of missing edges, the union of the binary silhouettes for contrast and the range images is obtained. Zernike moments are then computed for the combined silhouette of the segmented object. These moments provide shape-dependent features with high discriminatory ability, which are invariant to object rotation, translation and size scaling in the image. This set of features is then used for target identification from the STIL imagery data. To aid discrimination of different objects with potentially similar shape dependent features, mean and variance of the contrast and range images are also computed within the closed contour and then used as additional features for classification. Then the extracted features are applied to a multi-layer back-propagation neural network (BPNN) that performs target classification/identification. Different neural network structures are tried to determine the optimum classifier. The effectiveness of the developed algorithms is demonstrated on several data sets and the corresponding confusion matrices are also developed.
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