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Performance Analysis of Certain Scalar Wavelets on Mammogram Image Compression

机译:某些标量小波在乳腺X射线照片图像压缩中的性能分析

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Cancer is not just one disease, almost one hundred diseases. It is a disease of the genes. Breast cancer is in most incidence rates among women which cause cancer deaths ranking next to lung cancer. Breast cancer is treatable if detected early. Mammography is a special type of X-ray imaging used to create detailed images of the breast and also plays a major role in early detection of breast cancer. A high quality mammographic image is of high resolution but occupies large size. Hence, compression of mammogram images by preserving the information becomes utmost important. Clusters of fine, granular micro calcifications in mammograms may be an early sign of disease which may correspond to high correlation regions and curvilinear edges. Advances in wavelet transform are capable of surpassing the existing image compression standards like the Joint Photographic Experts Group (JPEG). Wavelet transform extracts the main signal co-efficient on all regions. The wavelet filters satisfying the desirable properties such as orthogonality and symmetry possess better compression. This paper uses certain scalar wavelets with different properties for mammogram decomposition and Set Partitioning in Hierarchical Tree (SPIHT) algorithm for compression. Few mammographic images from Mammogrphic Image Analysis Society (MIAS) database were tested using different families of wavelets with distinct properties and the results were analyzed. The wavelet satisfying the biorthogonal property gives better compression in many cases.
机译:癌症不仅是一种疾病,而且几乎是一百种疾病。这是一种基因疾病。乳腺癌是导致女性癌症死亡人数最多的女性,其发病率仅次于肺癌。如果及早发现,乳腺癌是可以治疗的。乳房X线照相术是一种特殊的X射线成像方法,用于创建乳房的详细图像,并且在乳腺癌的早期检测中也发挥着重要作用。高质量的乳房摄影图像具有高分辨率,但占用较大尺寸。因此,通过保存信息来压缩乳房X射线照片图像变得极为重要。乳房X线照片中的细小颗粒状微钙化簇可能是疾病的早期迹象,可能与高度相关的区域和曲线边缘相对应。小波变换的进步能够超越现有的图像压缩标准,例如联合图像专家组(JPEG)。小波变换提取所有区域上的主信号系数。满足诸如正交性和对称性之类的理想特性的小波滤波器具有更好的压缩率。本文使用某些具有不同属性的标量小波进行乳房X线照片分解,并使用“分层树集划分”(SPIHT)算法进行压缩。使用具有不同特性的不同子波家族,很少对来自乳腺图像分析协会(MIAS)数据库的乳腺图像进行测试,并对结果进行了分析。满足双正交特性的小波在许多情况下可提供更好的压缩效果。

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