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A Review of Contemporary Researches on Biomedical Image Analysis

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Book cover Recent Trends in Image Processing and Pattern Recognition (RTIP2R 2018)

Abstract

The objectives of this article was to review the literature on image analysis studies. The review article discussed various contemporary topics and studies performed by researchers in last five years. The various topics discussed are Advances in Biomedical imaging, Big data work flow for biomedical image analysis, Biomedical Image Analysis of Micro-bubbles in Dental Ultrasonic Scalars, Dynamic Programming Based Segmentation in Biomedical Imaging, Thermal Image Analysis using Serpentine method, A Review of Novel Approaches In Orthopaedic And Endoscopy and Biomedical Image Analysis of Obturated Root Canal: A Proposed Approach etc. The advances in biomedical image analysis are discussed based on the transform type used and fusion type used. The various transforms such as Laplace, Wavelet, Shearlet, Hilbert, Warbler, Tunable and Q Hadamard etc. The various types of fusions are used by authors to calculate the accuracy but there are certain limitations which we have discussed. The big data workflow process is discussed in detail. The biomedical image analysis for micro-bubble of dental ultrasonic scalar is reviewed. M-tracking is used for calculating the bubble radius and speed of bubble for analysis purpose. The M-tracking plugin helps to track the location of bubble. The cavitation is one of the most effective method to remove the bio-film of biomedical surfaces. The dynamic based programming helps to highlight the lines, contour and organ margin or location. The biomedical image analysis has its four quadrant viz. physics, medical imaging, machine learning and image processing and graphics. All the above discussed studies provides sound basis for future research. The biomedical image analysis of obturated root canal using pixel programme is proposed work by the authors of this review article, is also discussed. This review article is helpful and informative to Ph.D. scholars, researchers, decision makers and experts in the field of biomedical image analysis. The review is also useful in inter-disciplinary fields which are concerned with biomedical image analysis. In future the biomedical image analysis can be effectively implemented for faster diagnosis, qualitative analysis of obturation.

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Acknowledgements

Author acknowledges the support and guidance received from Dr. Vivek Hagade of M. A. Rangoonwala College of Dental Sciences and Research Centre Pune, India, Dr. Srinidhi S. R. of Sinhgad Dental College and Hospital Pune, India, Shivam Dental Laboratory Pune, India, Sculpt dent Dental Laboratory Ghorpadi, Pune, India for this PhD research work.

Author thanks to Dr. S. Koteeswaran (Dean-research studies), Dr. A. T. Ravichandran (Head of mechanical engineering department) of Veltech University, Chennai, India for approval of topic and for their insightful comments, encouragement and love. Author sincerely acknowledges the support received from Dr. S. D. Lokhande, Principal, Sinhgad College of Engineering Pune, India.

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Correspondence to Pravin R. Lokhande .

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Lokhande, P.R., Balaguru, S., Deenadayalan, G., Ghorpade, R.R. (2019). A Review of Contemporary Researches on Biomedical Image Analysis. In: Santosh, K., Hegadi, R. (eds) Recent Trends in Image Processing and Pattern Recognition. RTIP2R 2018. Communications in Computer and Information Science, vol 1036. Springer, Singapore. https://doi.org/10.1007/978-981-13-9184-2_7

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  • DOI: https://doi.org/10.1007/978-981-13-9184-2_7

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