Abstract

Image mosaicing is one of the most important subjects of research in computer vision at current. Image mocaicing requires the integration of direct techniques and feature based techniques. Direct techniques are found to be very useful for mosaicing large overlapping regions, small translations and rotations while feature based techniques are useful for small overlapping regions. Feature based image mosaicing is a combination of corner detection, corner matching, motion parameters estimation and image stitching. Furthermore, image mosaicing is considered the process of obtaining a wider field-of-view of a scene from a sequence of partial views, which has been an attractive research area because of its wide range of applications, including motion detection, resolution enhancement, monitoring global land usage, and medical imaging. Numerous algorithms for image mosaicing have been proposed over the last two decades. In this paper the authors present a review on different approaches for image mosaicing and the literature over the past few years in the field of image masaicing methodologies. The authors take an overview on the various methods for image mosaicing. This review paper also provides an in depth survey of the existing image mosaicing algorithms by classifying them into several groups. For each group, the fundamental concepts are first clearly explained. Finally this paper also reviews and discusses the strength and weaknesses of all the mosaicing groups.

Highlights

  • Nowadays, image mosaicing is gaining a lot of interests in the research community for both its scientific significance and potential derivatives in real world applications

  • For each of these classifications, we provide a comprehensive review of the major categories of the image mosaicing methods

  • Registration of images coming from different sources, which are focused on the same target but produced from different sensors, different perspective as well as different times, computes the optimal geometric transformation by looking into the correspondences between each pair of images

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Summary

INTRODUCTION

Image mosaicing is gaining a lot of interests in the research community for both its scientific significance and potential derivatives in real world applications. The authors observe that the majority of the recent works focus on dealing with the previous mentioned challenges, a comprehensive review of the exiting review of the existing algorithms remains highly overlooked. In [13][25] [44] the authors review the existing mosaicing techniques based on a specific image registration method. None of the existing surveys discuss in details the major categories of image mosaicing algorithms and do not successfully classify the most recent image mosaicing techniques. The authors classify the past and current mosaicing techniques based on image registration as well as image blending. For each of these classifications, we provide a comprehensive review of the major categories of the image mosaicing methods.

LITERATURE REVIEW (OVERVIEW)
IMAGE MOSAICING ALGORITHM GROUPING AND
FEATURE EXTRACTION
IMAGE MOSAICING BASED ON REGISTRATION GROUPING AND CLASSIFICATION
Spatial domain image mosaicing algorithms
Mutual information (MI)-based mosaicing
Feature from Accelerated Segment Test (FAST)-based corner detector
Frequency domain image mosaicing algorithms
IMAGE MOSAICING BASED ON BLENDING GROUPING AND CLASSIFICATION
Mosaicing algorithms using gradient-based blending
Image mosaicing algorithms using optimal seambased blending
CONCLUSION
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