International Research Journal of Engineering and Technology (IRJET)
e-ISSN: 2395 -0056
Volume: 03 Issue: 08 | Aug-2016
p-ISSN: 2395-0072
www.irjet.net
Detection of suspicious lesion based on Multiresolution Analysis using windowing and adaptive thresholding method. Ms. N. S. Pande Assistant Professor, Department of Computer Science and Engineering ,MGM’s COE, Nanded ---------------------------------------------------------------------***---------------------------------------------------------------------
Abstract - Mammography is a method to examine breast and is used as a tool to diagnosis breast cancer. In this paper an algorithm that first detects the type of lesion that mammogram contains and then it operates on multiresolution images of the original mammogram by using adaptive global thresholding and adaptive local thresholding segmentation by applying adaptive windowing is developed. The algorithm has tested 170 mammograms from Mammographic Image Analysis Society MiniMammographic database. Key Words: Adaptive thresholding; breast cancer; computer- aided detection; mammography; NSCT; segmentation.
1. INTRODUCTION
The most common and most hazardous disease amongst women found around the world is breast cancer. The world health organization’s International Agency for Research on cancer (IARC) has estimated that due to breast cancer more than 40,000 women expire each year [1]. The amount of breast cancer is increasing all around the world and to cure this disease it is necessary for the early diagnosis of the breast cancer.
For the detection of breast cancer mammography is a very effective technique. In mammography, mammograms are developed which can be called as X-ray of the breast. But detection of suspicious lesion just by observing the mammograms is a difficult task for doctors because at a very early stage the appearance of cancer in a mammogram is very subtle and unstable [2]. To avoid any mistake doctors’ now-a-days use a very easy method called as computer aided detection. In computer aided detection method the computer works on a predefined algorithm that basically works with two steps one is segmentation and second is removal of false positive and then the tumor is detected as final results. © 2016, IRJET
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A tumor can be classified into two types one is benign and other is malignant. Benign tumor is a mass of cells that lacks the ability to affect the neighboring cells and tissues. This is a major property of a cancerous cell thus benign tumors are non-cancerous cells. But in spite of being noncancerous still some benign tumors can have a negative effect. Malignant tumors are the masses that carry a property to potentially grow in size i.e. these cells can harm the neighboring cells easily and can have a serious effect on the patient which can even lead to death. The detection of tumor is not a very easy task because of the dense breast tissues. Thus, various different techniques are used amongst which one is the use of Wavelet transform. Wavelet-transform-based method offers a natural framework for multiscale image representation that can be separately analyzed [2], [3], [4]. Zhang and Desai [3] proposed a histogram based adaptive thresholding method that used first a 2D undecimated wavelet transform of an image at 4-5 scales then took its histogram which was considered as the probability density function of an image and then one scale was selected on which 1D undecimated wavelet transform is implemented and again 4-5 scales are obtain amongst which the largest local minima is calculated and is considered as a threshold for image segmentation. This method is very fast and simple but the method is not effective when the difference between the target and the background area is very less. The problem with mammographic masses is that they are overlapped with dense tissues which have a higher density than the masses thus it is difficult to directly segment the mammogram with accuracy. Kom et al. [4] proposed a new approach called as window based adaptive thresholding. In this method, mammograms undergo various pre-processing stages and then two windows one small and one large window are selected. On the basis of windowing method the mammogram is processed and a threshold value is calculated adaptively. Segmentation is carried out based on the calculated threshold value. This algorithm works best for segmentation in local area but it does not considers the small window. The center area is of the lesion is not segmented. In this paper, we will present a new algorithm which classifies the type of lesion present in the mammogram based of some extracted feature. This algorithm will ISO 9001:2008 Certified Journal
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