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Survey Paper | Computer Science & Engineering | India | Volume 6 Issue 5, May 2017
A Survey on Medical Image Segmentation
Gagandeep Kaur [15] | Jyotirmoy Chhaterji
Abstract: Image segmentation may be a method of partition of a picture into completely different objects. there's a major distinction between image sweetening and segmentation. In image sweetening method is to boost the given image quality with relation to image look (brightness, contrast, texture). In this segmentation method, the actual portion of a image is highlighted in keeping with the matter outlined. Here during this paper we have a tendency to see the performance of the varied algorithms for various pictures. Medical image process desires continuous enhancements in terms of techniques and applications to assist improve quality of services in health care business. The techniques used for interpolation, image registration, compression, diagnosis area unit to be improved to be abreast with growing demands within the business and rising technologies bearing on mobile computing and cloud computing. the combination of medical instrumentation and applications with wearable devices is additionally promising space for more analysis. This paper provides helpful insights into the sphere of medical image process and tries to outline the longer term scope of labour.
Keywords: Medical image processing MIP, medical diagnosis, MIP methods and applications
Edition: Volume 6 Issue 5, May 2017,
Pages: 1305 - 1311
Similar Articles with Keyword 'medical diagnosis'
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Review Papers, Computer Science & Engineering, United States of America, Volume 13 Issue 10, October 2024
Pages: 1645 - 1648Augmented AI in Health Diagnostics: Enhancing Medical Decision Making through Artificial Intelligence
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Comparative Studies, Computer Science & Engineering, India, Volume 3 Issue 12, December 2014
Pages: 761 - 765Comparative Study of Soft Computing Techniques on Medical Datasets
Mangesh Metkari | M.A. Pradhan