Classification of Satellite broadcasting Image and Validation Exhausting Geometric Interpretation

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IJSRD - International Journal for Scientific Research & Development| Vol. 3, Issue 10, 2015 | ISSN (online): 2321-0613

Classification of Satellite broadcasting Image and Validation Exhausting Geometric Interpretation M. Srinivasa Rao1 Kartheek V. L2 Dr. T. Madhu3 1,2 Assistant Professor 3Principal 1 Department of Computer Science Engineering 1,2,3 Swarnandhra College of Engineering and Technology Abstract— Classification of Land Use/Land Cover (LULC) data from satellite images is extremely remarkable to design the thematic maps for analysis of natural resources like Forest, Agriculture, Water bodies, urban areas etc. The process of Satellite Image Classification involves grouping the pixel values into significant categories and estimating areas by counting each category pixels. Manual classification by visual interpretation technique is accurate but time consuming and requires field experts. To overcome these difficulties, the present research work investigated efficient and effective automation of satellite image classification. Automated classification approaches are broadly classified in to i) Supervised Classification ii) Unsupervised Classification iii) Object Based Classification. This paper presents classification capabilities of K-Means, Parallel Pipe and Maximum Likelihood classifiers to classify multispectral spatial data (LISS-4). Using statistical inference, classified results are validated with reference data collected from field experts. Among three, Maximum Likelihood classifier (MLC) gained a significant credit in terms of getting maximum Overall accuracy and Kappa Factor. Key words: Land Use Land Cover, Pixel, Classification, LISS-4, Overall accuracy, Kappa Factor

extract information from enormous number of satellite images. Satellite image classification is the process of coalition the pixels in to meaningful subdivision based on its numeric values [4]. Satellite image classification involves interpretation of remote sensing images, Spatial data mining to study about various natural recourses like Forest, Agriculture, Water bodies, Urban areas and determining various land uses in an area[5]. This paper is structured in assorted sections. Section-II describes the Hierarchy of Satellite image classification techniques. Section-III explains the various classification methods. Section-IV describes about the study area and data sources. Section-V presents validation of results using statistical inference. Results and Discussions are provided in Section-VI. The final section endows the conclusion. II. SATELLITE IMAGE CLASSIFICATION TECHNIQUES Based on the spatial resolution, satellite images are categorized in to Low (coarser pixel), Medium (medium pixel size) and High (Finer pixels) resolution satellite images (see Figure 1).

I. INTRODUCTION Satellite imagery is a basis of large amount of two dimensional information is recorded by satellite sensor. Satellite images are rich and play a crucial role in providing geographical information [1]. Satellite and remote sensing images provides quantitative and qualitative information that reduces sophistication of field work and study time [2]. Satellite remote sensing technologies collect temporal data in the form of images at regular intervals. The volumes of data receive at datacenters is huge and it is growing exponentially as technology is growing rapid speed as timely and data volumes and data volumes have been emergent at an epidemic rate [3]. There is a strong need of well-organized and constructive mechanisms to extract and interpret valuable information from massive satellite images. Satellite image classification is a powerful technique to

Fig. 1: Low, Medium And High Spatial Resolution Satellite Image. There are several methods and techniques for satellite image taxonomy (see Figure 2). These methods are generally classified in to three categories [6]. 1) Manual classification 2) Automatic classification 3) Hybrid classification

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