纹理与目标结合技术在城市土地覆盖图像分类中的应用

Ms. J. Jacinth Jennifer
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引用次数: 0

摘要

卫星图像为通过遥感技术获取具体信息铺平了道路。为了提取图像的特征,必须对图像进行分类。目前存在各种分类技术和算法来检索图像中的各种特征。随着技术的快速发展,有必要通过开发新的特征检索技术来弥补其进步。在高分辨率卫星图像中,基于目标的特征检索和基于纹理的特征检索技术越来越受到重视。基于纹理的特征检索涉及到多种技术,其中Haralick纹理参数法具有重要意义。因此,基于对象的特征检索技术也有自己的算法和过程。该识别软件为纹理和基于对象的技术相结合提供了一个平台。基于对象的分类技术是高分辨率图像分类的最佳方法。因此,首先将图像分割成对象进行分类。通过统计分析,选择了城市土地覆盖分类中较好的哈拉里克纹理参数。最后利用所选择的纹理参数对目标进行分类。对分类图像进行了精度检验,得到了94.5%的高准确率。
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Performance of Combination of Texture and Object Based Techniques in Image Classification for Urban Land Cover
Satellite imagery paves way to obtain tangible information through remote sensing techniques.  It is necessary to classify the image in order to extract the features.  There exist various classification techniques and algorithms to retrieve various features from imagery.  As the technology development proceeds in a faster track it is necessary to compensate its advancements by developing new techniques for feature retrieval.  As far as high resolution satellite imagery are concerned object based feature retrieval and texture based feature retrieval techniques are gaining its importance.  The texture based feature retrieval has various techniques involved in it, among which Haralick’s texture parameters has much importance.  Thereby object based technique also has its own way of algorithms and processes for feature retrieval.  The eCognition software provides a platform for combining texture and object based technique.  It is well known from various journals that object based technique is best for classifying high resolution imagery.  Thus the image is primarily segmented into objects for classification.  The Haralick’s texture parameters which serve well in classification of urban land cover is chosen by computing statistical analysis.  Finally the chosen texture parameter is adopted in the classification of the objects.  The classified imagery is checked for accuracy and a high accuracy of 94.5% is obtained.
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