Chen Zhe, Zhang Zhen, Bu Yang, Dai Fengzhao, Fan Tanghuai, Wang Huibin
College of Computer and Information, Hohai University, Nanjing 211100, China.
Laboratory of Information Optics and Opto-Electronic Technology, Shanghai Institute of Optics and Fine Mechanics, Shanghai 201800, China.
Sensors (Basel). 2018 Jan 12;18(1):196. doi: 10.3390/s18010196.
Underwater optical environments are seriously affected by various optical inputs, such as artificial light, sky light, and ambient scattered light. The latter two can block underwater object segmentation tasks, since they inhibit the emergence of objects of interest and distort image information, while artificial light can contribute to segmentation. Artificial light often focuses on the object of interest, and, therefore, we can initially identify the region of target objects if the collimation of artificial light is recognized. Based on this concept, we propose an optical feature extraction, calculation, and decision method to identify the collimated region of artificial light as a candidate object region. Then, the second phase employs a level set method to segment the objects of interest within the candidate region. This two-phase structure largely removes background noise and highlights the outline of underwater objects. We test the performance of the method with diverse underwater datasets, demonstrating that it outperforms previous methods.
水下光学环境受到各种光学输入的严重影响,如人造光、天空光和环境散射光。后两者会阻碍水下目标分割任务,因为它们会抑制感兴趣目标的出现并扭曲图像信息,而人造光则有助于分割。人造光通常聚焦于感兴趣的目标,因此,如果能识别出人造光的准直情况,我们就可以初步确定目标物体的区域。基于这一概念,我们提出了一种光学特征提取、计算和决策方法,将人造光的准直区域识别为候选目标区域。然后,第二阶段采用水平集方法在候选区域内分割感兴趣的目标。这种两阶段结构在很大程度上消除了背景噪声,并突出了水下物体的轮廓。我们用不同的水下数据集测试了该方法的性能,结果表明它优于以前的方法。