利用语义分割技术对超光谱图像进行基于对象的图像分析

Amit Kumar Sharma, Manju Bargavi, Akhilendra Pratap Singh
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引用次数: 0

摘要

利用语义分割策略对高光谱图像进行基于物体的图像分析,是分析遥感统计数据的一种独特方法。该方法利用高级系统获取知识(ML)和计算机视觉算法的能量来分析多维高光谱图像数据集。其目标是根据像素的光谱和空间特征,将像素稳健地组织成群。然后利用这些聚类来提供有关照片内容材料的有意义的记录。然后使用语义分割算法生成感兴趣项目的高阶掩码。这些掩码的结果与输入的高光谱统计数据混合,以创建描述每个集群的光谱和纹理家园的多个特征向量。随后,设备管理算法会根据小工具的特征对其进行分类,从而提供有关图片中物品的精确信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object-Based Image Analysis of Hyper Spectral Imagery Using Semantic Segmentation Techniques
Object-based image analysis of Hyperspectral Imagery using Semantic Segmentation strategies is a singular approach for analyzing far-off sensing statistics. This method leverages the energy of a superior system gaining knowledge of (ML) and computer vision algorithms to analyze multidimensional hyperspectral image datasets. The goal is to robustly organize pixels into clusters in step with their spectral and spatial traits. Those clusters are then used to give meaningful records approximately the content material of the photo., the enter pix are pre-processed to reduce noise and boom contrast. A semantic segmentation algorithm is then used to generate excessive-degree masks of the items of interest. The outcomes of those masks are mixed with the input hyperspectral statistics to create several feature vectors describing the spectral and texture homes of every cluster. Sooner or later, a device-mastering algorithm categorizes the gadgets consistent with their traits, presenting precise information about the items in the picture.
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