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Analysis of Reassembly Techniques for Image Fragments

S. Manimurugan, Dr.K. Porkumaran, Sherin Soman

Abstract


A variety of image fragments need to be reassembled inorder to reconstruct images and objects. This is a problem often encountered in several applications, ranging from archeology to medicine. The research focus of Image Fragments Reassembly Technique is on how to reassemble as many fragments as possible and at the same time to reduce the false matching error rate. The manual reassembly of image fragments is very difficult. It requires great amount of time, skill and effort. Thus, the automatic reassembly of image fragments is very important and can lead to a faster and more efficient reassembly. There are many techniques available for reassembling image fragments. This paper presents a survey of different reassembly techniques for image fragments and their performances. All these reassembly techniques can lead to a significant reduction in the human effort involved.


Keywords


Archaeology, Fragment, Matching, Reconstruction

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References


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