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Colour space influence for vegetation image classification Application to Caribbean forest and agriculture

机译:加勒比林与农业的植被图像分类应用的颜色空间影响

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This paper deals with a comparison of different colour space in order to improve high resolution images classification. The background of this study is the measure of the agriculture impact on the environment in islander context. Biodiversity is particularly sensitive and relevant in such areas and the follow-up of the forest front is a way to ensure its preservation. Very high resolution satellite images are used such as QuickBird and IKONOS scenes. In order to segment the images into forest and agriculture areas, we characterize both ground covers with colour and texture features. A classical unsupervised classifier is then used to obtain labelled areas. As features are computed on coloured images, we can wonder if the colour space choice is relevant. This study has been made considering more than fourteen colour spaces (RGB, YUV, Lab, YIQ, YC_ CH21r,_SsV,X HYISZI,I C_etMc.Y)_ ,a 3LnMdS s,h HowSLs, KLT, IHS, I_ the visual and quantitative superiority of IHS on all others. For conciseness reasons, results only show RGB, I_ a21nII_d_3IHS colour spaces.
机译:本文涉及不同颜色空间的比较,以提高高分辨率图像分类。本研究的背景是衡量岛屿环境中环境的影响。生物多样性特别敏感,在这些领域相关,森林前面的后续行动是一种确保其保存的方法。使用非常高分辨率的卫星图像,例如Quickbird和Ikonos场景。为了将图像分段为森林和农业领域,我们将两种地面覆盖物呈现出色和纹理特征。然后使用经典无监督的分类器来获得标记区域。随着在彩色图像上计算的功能,我们可以想知道颜色空间选择是否相关。这项研究已经考虑了超过14个颜色的空间(RGB,YUV,Lab,YIQ,YC_ CH21R,_SSV,X Hyiszi,I C_ETMC.Y)_,a 3lnmds s,h howsls,klt,ihs,i_视觉和所有其他人对IHS的定量优势。出于简洁原因,结果仅显示RGB,I_ A21NII_D_3IHS颜色空间。

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