水下彩色视频中珊瑚礁成分的图像分类

M. Soriano, S. Marcos, C. Saloma, M. Quibilan, P. Aliño
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引用次数: 47

摘要

本研究的目的是使珊瑚礁评估自动化,即使用基于计算机的分类器将数字化水下视频中的珊瑚图像分类为底栖动物类别,从而使珊瑚礁分析变得不那么主观,不那么繁琐,更精确。珊瑚呈现出各种各样的颜色、纹理和结构,这些是海洋科学家用来分类的视觉线索。在计算机视觉中,颜色是图像元素的点属性,而纹理是一个区域的属性。颜色和纹理被结合为颜色纹理,它是描述一个区域中颜色的空间组织的一种特征。作为分类器的输入,作者从珊瑚图像中提取颜色、纹理和颜色-纹理描述符,并使用每个特征测量识别率。珊瑚是三维结构,在成像时,容易出现不同的分辨率、透视投影和照明条件。因此,本研究的另一个目的是解决水下图像模式识别中的光照、旋转和尺度不变性问题。这些图像被分为五类底栖生物:活珊瑚、死珊瑚、带藻类的死珊瑚、藻类和非生物。总的来说,纹理被发现比单独使用颜色或颜色和纹理结合更有区别。用颜色特征来识别死珊瑚是最成功的。
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Image classification of coral reef components from underwater color video
The purpose of this study is to automate coral reef assessment, that is, to classify coral images into benthic categories from digitized underwater video using a computer-based classifier such that coral reef analysis becomes less subjective, less tedious and more precise. Corals exhibit a variety of color, texture and structure which are the visual cues used by marine scientists for their classification. In computer vision, color is a point property of a picture element while texture is a property of an area. Color and texture have been combined as color-texture which is a feature that describes the spatial organization of colors in an area. As inputs to a classifier, the authors extract color, texture and color-texture descriptors from coral images and measure recognition rates using each feature. Corals are 3D structures and, when imaged, are prone to varying resolutions, perspective projection and lighting conditions. Therefore, an additional objective of this study is to address the problem of illumination, rotation and scale invariance in pattern recognition of underwater images. Images were classified into one of five benthic categories: alive coral, dead coral, dead coral with algae, algae and abiotics. Overall, texture was found to be more discriminating than using color alone or color and texture combined. Dead coral was the most successfully recognized class using color features.
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