Satellite Image retrival based on sensitive content method

Ajitesh Yadav, R. R. sedemkar, H. Patil
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Abstract

-The satellite cloud image is a valuable source of information in weather forecasting and early prediction of different atmospheric disturbances such as typhoons, hurricanes etc. Due to the increased number and resolutions of the Earth imaging sensors and image acquisition techniques, the satellite image data is growing enormously which makes it difficult to store and manage. The traditional image retrieval technique is inefficient in retrieving these images. Content-based image retrieval is an approach from data mining community which provides the solution of managing this huge quantity of data. In this research, a Content-Based Image Retrieval (CBIR) system has been applied on Geospatial Images of fire and forest, Clutter and water, cyclone and water etc. Geospatial images are processed using K-means clustering algorithms to obtain a highdimensional feature vector. The Feature vectors include HSV Histogram, LAB features, color autocorrelation, color moments, Gabor features. Then Train a KNN classifier using those features using different distance metrics. The images and the extracted feature vectors are stored in the database. Distance metric is used to compute the similarity between the images. The system is robust as it provides search based on the multiple features. The performance of the system was evaluated by analyzing the retrieval results using precision. Many past result was evaluated and based on that results and method the aim was to find the best outcome among all.
基于敏感内容方法的卫星图像检索
-卫星云图是天气预报和早期预测不同大气扰动(如台风、飓风等)的宝贵资料来源。由于地球成像传感器的数量和分辨率的提高以及图像采集技术的发展,卫星图像数据不断增长,这给存储和管理带来了很大的困难。传统的图像检索技术在检索这些图像时效率低下。基于内容的图像检索是数据挖掘界提出的一种方法,为管理海量数据提供了解决方案。本研究将基于内容的图像检索(CBIR)系统应用于火灾与森林、杂波与水、气旋与水等地理空间图像。利用k均值聚类算法对地理空间图像进行处理,得到高维特征向量。特征向量包括HSV直方图、LAB特征、颜色自相关、颜色矩、Gabor特征。然后使用这些特征使用不同的距离度量来训练KNN分类器。图像和提取的特征向量存储在数据库中。使用距离度量来计算图像之间的相似度。该系统提供基于多种特征的搜索,具有较强的鲁棒性。通过对检索结果的精度分析,评价了系统的性能。评估了许多过去的结果,并基于这些结果和方法,目的是在所有结果中找到最佳结果。
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