基于分段网和投票机制的遥感笼图像精确分割

IF 0.8 4区 农林科学 Q4 AGRICULTURAL ENGINEERING
Yunpeng Liu, Xin Xia, Zhuhua Hu, Shengpeng Fu
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引用次数: 2

摘要

构建了遥感笼分割(RSCS)数据集。为了实现精确的分段,引入了分段网。使用随机裁剪、数据增强和三通道分离操作来构建训练集。采用滑动窗口重叠裁剪方法和两轮投票来提高分割精度。在海水养殖中,网箱布置不当,海水养殖密度过大,会导致水质恶化,有害细菌滋生。但是,单纯依靠人工测量会消耗相当多的人力和物力。为此,我们提出了一种基于SegNet和投票机制的遥感笼图像精确分割方案。首先,构建遥感笼分割(RSCS)数据集。第二,采集的样本数量太少,样本量过大。使用随机裁剪、数据增强和三通道分离操作来构建训练集。生成了由三个图像大小和三个单通道组成的九个训练集。最后,对测试样本采用滑动窗口重叠裁剪方法和两轮投票来提高分割精度。实验结果表明,使用滑动窗口重叠裁剪、三通道投票和三尺寸投票可以将mIoU(平均交叉口/联合)分别提高0.9%、1.9%和0.6%。采用最终方案,测试样本的mIoU可达0.89。关键词:海水养殖,远程图像分割,SegNet,滑动窗口重叠裁剪,投票机制
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Precise Segmentation of Remote Sensing Cage Images Based on SegNet and Voting Mechanism
HighlightsA Remote Sensing Cage Segmentation (RSCS) dataset is constructed.The SegNet network is introduced to achieve precise segmentation.Random cropping, data augmentation, and three-channel separation operations are used to construct the training sets.The proposed sliding window overlap cropping method and two rounds of voting are used to improve the segmentation accuracy.Abstract. In mariculture, improper cage layout and excessive density of mariculture will lead to deterioration of water quality and the growth of harmful bacteria. However, relying solely on manual measurement will consume a considerable amount of manpower and material resources. Therefore, we propose a precise segmentation scheme for remote sensing cage images based on SegNet and voting mechanism. First, a Remote Sensing Cage Segmentation (RSCS) dataset is constructed. Second, the number of collected samples is too small and the sample sizes are too large. Random cropping, data augmentation, and three-channel separation operations are used to construct the training sets. Nine training sets consisting of three image sizes and three single channels are generated. Finally, the proposed sliding window overlap cropping method and two rounds of voting are used on the test samples to improve the segmentation accuracy. The experimental results show that using sliding window overlap cropping, three-channel voting, and three-size voting can improve mIoU (mean Intersection over Union) by up to 0.9%, 1.9%, and 0.6%, respectively. By using the proposed final scheme, the mIoU of test samples can reach 0.89. Keywords: Mariculture, Remote image segmentation, SegNet, Sliding window overlap cropping, Voting mechanism.
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来源期刊
Applied Engineering in Agriculture
Applied Engineering in Agriculture 农林科学-农业工程
CiteScore
1.80
自引率
11.10%
发文量
69
审稿时长
6 months
期刊介绍: This peer-reviewed journal publishes applications of engineering and technology research that address agricultural, food, and biological systems problems. Submissions must include results of practical experiences, tests, or trials presented in a manner and style that will allow easy adaptation by others; results of reviews or studies of installations or applications with substantially new or significant information not readily available in other refereed publications; or a description of successful methods of techniques of education, outreach, or technology transfer.
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