开发超光谱图像中面向对象的自动图像分析技术

Monika Abrol, Rajendra P. Pandey, Rahul Pawar
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引用次数: 0

摘要

高光谱照片(HSI)是应用合成智能的机器获取知识的新兴领域,其项目导向图像评估的计算机化策略的开发在一系列领域中变得越来越重要。这种分析要求从高光谱照片中对感兴趣的小工具进行特殊而正确的说明。为此,人们提出了特征提取、分类器和聚类技术,以便对它们进行绿色分类。用于从高光谱图像中提取统计数据的最大、最常见的特征提取技术包括辐射测量、光谱带形状和光谱相关性。这些功能提取策略会产生特定的特征描述符,可与项目分类器和聚类解决方案结合使用,以检测和分类 HSI 中的礼品对象。据观察,特征提取策略与辐射归一化差异植被指数(NDVI)和重要成分分析(PCA)一起,在许多情况下都取得了成功。分类器、线性和非线性 SVM、神经网络和选择总线是读取 HSI 的最著名策略。使用单一的此类策略可提供最直接的限制性结果;然而,使用这些策略的组合可明显提高分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Automated Techniques for Object-Oriented Image Analysis in Hyper Spectral Images
the development of computerized strategies for item-orientated image evaluation in Hyper Spectral photos (HSI), an emerging field of applying machine-gaining knowledge of synthetic intelligence, has ended up an increasing number of crucial in a selection of domain names. This kind of analysis calls for a particular and correct illustration of the gadgets of interest from the hyperspectral photos. For this reason, characteristic extraction, classifiers, and clustering techniques have been proposed if you want to come across and classify them greenly. The maximum, not unusual feature extraction techniques used to extract statistics from HSI consist of radiometry, spectral band shapes, and spectral correlation. These function extraction strategies produce specific characteristic descriptors that can be utilized in aggregate with item classifiers and clustering solutions to detect and classify the objects gift in the HSI. Characteristic extraction strategies, together with Radiometric Normalized distinction flora Index (NDVI) and significant components analysis (PCA), have been observed to achieve success in numerous scenarios. Classifiers, linear and nonlinear SVM, neural networks, and choice bushes are the most famous strategies for reading HSI. Using a single this kind of strategy has been seen to offer the most straightforward restricted outcomes; however, using a combination of those strategies has been visible to enhance the classification performance.
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