A Novel Image Retrieval Technique based on Gabor Function, Local Tetra Pattern and ASMC

K. Ashok, R. Manthalkar
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Abstract

CBIR alone won’t give perfect retrieval results due to semantic gap. To overcome the problem of semantic gap in CBIR, more than one Semantic Content Based Image Retrieval techniques are required which is known as Hybrid Classification System. Hence the proposed approach uses multiple machine learning techniques with combination of different classifiers like supervised and unsupervised, soft classifiers, spectral contextual classifiers. Remotely Sensed Image Retrieval System (RSIR) has to identify and retrieve similar images based on query image, to do so we need to extract feature of image in order to compare query Image and database image. The proposed approach is a combination of two Phases. First Phase involves feature extraction by Texture Feature with the help of Gabor Function and Spectral Distribution using Advanced Split and Merge Clustering whereas second Phase identifies the Local Pattern of retrieved images in Phase-I. The performance of the proposed approach is measured in terms of Precision, Recall and f-measure. Statistical analysis of the proposed hybrid approach in Phase-I (Texture and Spectral Distribution) shows that precision, recall and f-measure is get improved, on an average by 19.46%, 8.84%, 14.46% respectively when get compared with CBIR (Texture). Phase-I and Phase –II comparison in term of f-measure is increased up to 96.95%. Hence the hybrid approach gives more accurate result as compare to individual approach General Terms Image Retrieval for dataset of satellite imagery
基于Gabor函数、局部Tetra模式和ASMC的图像检索技术
由于语义缺口的存在,单靠CBIR不能给出完美的检索结果。为了克服CBIR中的语义缺口问题,需要多种基于语义内容的图像检索技术,即混合分类系统。因此,提出的方法使用多种机器学习技术,结合不同的分类器,如监督和无监督,软分类器,光谱上下文分类器。遥感图像检索系统(RSIR)必须基于查询图像识别和检索相似的图像,为此需要提取图像的特征,以便将查询图像与数据库图像进行比较。建议的方法是两个阶段的结合。第一阶段是利用Gabor函数和光谱分布进行纹理特征提取,第二阶段是在第一阶段识别检索图像的局部模式。提出的方法的性能是衡量精度,召回率和f-测度。对混合方法在第一阶段(纹理和光谱分布)的统计分析表明,与CBIR(纹理)相比,混合方法的精度、召回率和f-measure分别提高了19.46%、8.84%和14.46%。i期和ii期比较f-measure提高到96.95%。因此,对于卫星图像数据集,混合方法的检索结果比单独的检索方法更为准确
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