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Accelerated Detection of Intracranial Space-occupying Lesions with CUDA Based on Statistical Texture Atlas in Brain HRCT

机译:基于统计纹理阿特拉斯在脑力解放堂统计纹理地图集时加速检测颅内空间占据病变

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In this paper, we present a method that detects intracranial space-occupying lesions in two-dimensional (2D) brain high-resolution CT images. Use of statistical texture atlas technique localizes anatomy variation in the gray level distribution of brain images, and in turn, identifies the regions with lesions. The statistical texture atlas involves 147 HRCT slices of normal individuals and its construction is extremely time-consuming. To improve the performance of atlas construction, we have implemented the pixel-wise texture extraction procedure on Nvidia 8800GTX GPU with Compute Unified Device Architecture (CUDA) platform. Experimental results indicate that the extracted texture feature is distinctive and robust enough, and is suitable for detecting uniform and mixed density space-occupying lesions. In addition, a significant speedup against straight forward CPU version was achieved with CUDA.
机译:在本文中,我们提出了一种检测二维(2D)脑高分辨率CT图像中的颅内空间占据病变的方法。使用统计纹理地图集技术本地化了脑图像灰度分布的解剖学变化,反过来,用病变识别区域。统计纹理地图集涉及147个HRCT切片的正常个体,其结构非常耗时。为了提高地图集结构的性能,我们在NVIDIA 8800GTX GPU上实现了具有计算统一设备架构(CUDA)平台的像素-Wise纹理提取过程。实验结果表明,提取的纹理特征是鲜明和稳健的,适用于检测均匀和混合密度的空间占领病变。此外,通过CUDA实现了对直接CPU版本的显着加速。

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