...
首页> 外文期刊>International journal of remote sensing >Semantic segmentation of major macroalgae in coastal environments using high-resolution ground imagery and deep learning
【24h】

Semantic segmentation of major macroalgae in coastal environments using high-resolution ground imagery and deep learning

机译:利用高分辨率地面图像和深度学习沿海环境主要宏观格雷的语义细分

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Macroalgae are a fundamental component of coastal ecosystems and play a key role in shaping community structure and functioning. Macroalgae are currently threatened by diverse stressors, particularly climate change and invasive species, but they do not all respond in the same way to the stressors. Effective methods of collecting qualitative and quantitative information are essential to enable better, more efficient management of macroalgae. Acquisition of high-resolution images, in which macroalgae can be distinguished on the basis of their texture and colour, and the automated processing of these images are thus essential. Although ground images are useful, labelling is tedious. This study focuses on the semantic segmentation of five macroalgal species in high-resolution ground images taken in 0.5 x 0.5 m quadrats placed along an intertidal rocky shore at low tide. The target species, Bifurcaria bifurcata, Cystoseira tamariscifolia, Sargassum muticum, Sacchoriza polyschides and Codium spp., which predominate on intertidal shores, belong to different morpho-functional groups. An explanation of how to convert vector-labelled data to raster-labelled data for adaptation to Convolutional Neural Network (CNN) input is provided. Three CNNs (MobileNetV2, Resnet18, Xception) were compared, and ResNet18 yielded the highest accuracy (91.9%). The macroalgae were correctly segmented, and the main confusion occurred at the borders between different macroalgal species, a problem derived from labelling errors. In addition, the interior and exterior of the quadrats were correctly delimited by the CNNs. The results were obtained from only one hundred labelled images and the method can be performed on personal computers, without the need to use external servers. The proposed method helps automation of the labelling process.
机译:Macroalgae是沿海生态系统的基本组成部分,在塑造群落结构和运作中发挥关键作用。 Macroalgae目前受到不同的压力源,特别是气候变化和侵入性物种的威胁,但它们并非所有的反应都与压力源相同。收集定性和定量信息的有效方法对于实现大型宏观格良好,更有效地管理是必不可少的。获取高分辨率图像,其中可以基于其纹理和颜色来区分大型宏观,因此这些图像的自动化处理是必不可少的。虽然地面图像很有用,但标签是乏味的。本研究重点介绍,在低潮汐下沿着跨越岩石岸上拍摄的高分辨率接地图像中五种大型种类种类的语义分割。目标物种,Bifurcaria Bifurcata,Cystoseira Tamariscifolia,Sargassum Muticum,Sacchoriza Polyschides和Codium SPP。占据跨境海岸,属于不同的官能团。提供了如何将矢量标记数据转换为用于适应卷积神经网络(CNN)输入的栅格标记数据的说明。比较了三个CNNS(MobileNetv2,ResET18,七,七,曲折,Reset18产生了最高精度(91.9%)。大理石果被正确分段,并且主要混乱发生在不同的大甲术物种之间的边界处,是源自标记误差的问题。此外,Quadrats的内部和外部被CNN正确界定。结果是从标记的一百个图像获得,并且可以在个人计算机上执行该方法,而无需使用外部服务器。所提出的方法有助于标记过程的自动化。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号