Detection of Coastal Green Macroalgae based on SLIC, CNN and SVM

Jinghu Li, Lili Wang, Q. Xing
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Abstract

Video surveillance is an important method to obtain the dynamic changes of green macroalgae along the coast. The paper proposes a coastal green macroalgae extraction method based on the SLIC superpixel segmentation, CNN and SVM to realize the automated recognition of green macroalgae from lots of high-resolution RGB video data collected by unmanned aerial vehicle (UAV) and handheld devices. Firstly, SLIC algorithm is used to generate the multi-scale patches on the original high-resolution image. Then, three classification CNN is used to divide the multi-scale patches into three types: green macroalgae, background and mixing. Finally, SVM algorithm is used to extract the green macroalgae to improve the accuracy at the pixel level in the mixed patches. In order to evaluate the performance of the proposed method, experiments are conducted on our coastal green macroalgae image dataset. Compared with the method of RGB vegetation indices (such as ExR, RGBVI, NGBDI), the overall accuracy (OA), F1 score, and Kappa of the green macroalgae extraction with the method proposed in this paper are up to 95.23%, 0.9612, 0.9436, respectively. The results show that our method is significantly better than that of RGB vegetation indices since it effectively reduces the influence of sea waves and light on the recognition results. The automated extraction method for coastal green macroalgae proposed in this paper can provide a reference for the automatic monitoring of coastal green macroalgae with high precision.
基于SLIC、CNN和SVM的海岸绿藻检测
视频监控是获取沿海绿藻动态变化的重要手段。本文提出了一种基于SLIC超像素分割、CNN和SVM的沿海绿藻提取方法,从无人机和手持设备采集的大量高分辨率RGB视频数据中实现对绿藻的自动识别。首先,利用SLIC算法在原始高分辨率图像上生成多尺度补丁;然后,使用三分类CNN将多尺度斑块划分为绿色巨藻、背景和混合三种类型。最后,利用支持向量机算法对大绿藻进行提取,提高混合斑块像素级的精度。为了评估该方法的性能,在我们的沿海绿色大藻类图像数据集上进行了实验。与RGB植被指数ExR、RGBVI、NGBDI等方法相比,本文方法提取的绿藻总体精度(OA)、F1得分、Kappa分别达到95.23%、0.9612、0.9436。结果表明,该方法有效地降低了海浪和光照对识别结果的影响,显著优于RGB植被指数。本文提出的海岸带绿藻自动提取方法可为海岸带绿藻高精度自动监测提供参考。
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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