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Segmentation of bladder tumors in cystoscopy images using a MAP approach in different color spaces

机译:在不同颜色空间中使用MAP方法对膀胱镜图像中的膀胱肿瘤进行分割

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Nowadays the diagnosis of bladder lesions relies upon cystoscopic examination and depend on the interpreter's experience. State of the art of bladder tumor identification are based on 3D reconstruction, using CT images (Virtual Cystoscopy) or images where the structures are exalted with the use of pigmentations, but none uses white light cystoscopy images. Traditional cystoscopic images processing has a huge potential to improve early tumor detection and allow a more effective treatment. In this paper is described an initial approach to do segmentation of bladder cystoscopic images. This approach will be used in the future to automatically detect these types of lesions. It can be assumed that each region has a normal distribution with specific parameters, leading to the assumption that the distribution of intensities is a Gaussian Mixture Model (GMM). The most common bladder tumor type, with a cauliflower shape, appears with higher intensity than normal regions. The segmentation of these images is based on a Maximum A Posteriori (MAP) approach depending on pixel intensities of each three RGB and HSV channels, using the Expectation-Maximization (EM) algorithm to estimate the best GMM parameters. Experimental results show that the proposed method does bladder tumor segmentation in a more efficient way in RGB color space than in HSV, even in cases where the tumor shape is not well defined. Results also show that the channels with best results are the R component from RGB and the V component from HSV.
机译:如今,膀胱病变的诊断依靠膀胱镜检查,并取决于口译员的经验。膀胱肿瘤识别的最新技术基于3D重建,使用CT图像(虚拟膀胱镜检查)或使用色素沉着使结构高贵的图像,但没有一个使用白光膀胱镜检查图像。传统的膀胱镜图像处理具有巨大的潜力,可以改善早期肿瘤的发现并提供更有效的治疗方法。本文描述了一种初步的方法来进行膀胱膀胱镜图像的分割。将来将使用这种方法来自动检测这些类型的病变。可以假设每个区域都具有带有特定参数的正态分布,从而得出强度分布是高斯混合模型(GMM)的假设。具有花椰菜形状的最常见的膀胱肿瘤类型比正常区域具有更高的强度。这些图像的分割基于最大后验(MAP)方法,该方法取决于期望的三个RGB和HSV通道的像素强度,并使用Expectation-Maximization(EM)算法来估计最佳GMM参数。实验结果表明,即使在肿瘤形状不明确的情况下,所提出的方法在RGB颜色空间中比在HSV中以更有效的方式进行膀胱肿瘤分割。结果还表明,效果最好的通道是来自RGB的R分量和来自HSV的V分量。

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