Wei Yangjie, Zhang Yuwei
College of Computer Science and Engineering, Northeastern University, Wenhua Str. 3, Shenyang 110819, China.
State Key Laboratory of Synthetical Automation for Process Industries, Wenhua Str. 3, Shenyang 110819, China.
Sensors (Basel). 2016 Sep 27;16(10):1590. doi: 10.3390/s16101590.
Real-time and accurate detection of the sailing or water area will help realize unmanned surface vehicle (USV) systems. Although there are some methods for using optical images in USV-oriented environmental modeling, both the robustness and precision of these published waterline detection methods are comparatively low for a real USV system moving in a complicated environment. This paper proposes an efficient waterline detection method based on structure extraction and texture analysis with respect to optical images and presents a practical application to a USV system for validation. First, the basic principles of local binary patterns (LBPs) and gray level co-occurrence matrix (GLCM) were analyzed, and their advantages were integrated to calculate the texture information of river images. Then, structure extraction was introduced to preprocess the original river images so that the textures resulting from USV motion, wind, and illumination are removed. In the practical application, the waterlines of many images captured by the USV system moving along an inland river were detected with the proposed method, and the results were compared with those of edge detection and super pixel segmentation. The experimental results showed that the proposed algorithm is effective and robust. The average error of the proposed method was 1.84 pixels, and the mean square deviation was 4.57 pixels.
实时、准确地检测航行状态或水域将有助于实现无人水面舰艇(USV)系统。尽管在面向USV的环境建模中存在一些使用光学图像的方法,但对于在复杂环境中运行的实际USV系统而言,这些已发表的水线检测方法的鲁棒性和精度都相对较低。本文针对光学图像提出了一种基于结构提取和纹理分析的高效水线检测方法,并将其应用于USV系统进行实际验证。首先,分析了局部二值模式(LBP)和灰度共生矩阵(GLCM)的基本原理,并综合它们的优点来计算河流图像的纹理信息。然后,引入结构提取对原始河流图像进行预处理,以去除USV运动、风和光照产生的纹理。在实际应用中,使用所提方法对沿内河行驶的USV系统拍摄的许多图像的水线进行了检测,并将结果与边缘检测和超像素分割的结果进行了比较。实验结果表明,所提算法有效且鲁棒。所提方法的平均误差为1.84像素,均方差为4.57像素。