计算机科学
软件
可用的
人工智能
像素
加速
参考软件
扫描仪
深度学习
计算机图形学(图像)
计算机视觉
规范化(社会学)
有色的
模式识别(心理学)
并行计算
操作系统
多媒体
复合材料
社会学
材料科学
人类学
作者
Deepak Anand,Goutham Ramakrishnan,Amit Sethi
出处
期刊:International Conference on Systems, Signals and Image Processing
日期:2019-06-01
被引量:31
标识
DOI:10.1109/iwssip.2019.8787328
摘要
Normalizing unwanted color variations dne to differences in staining processes and scanner responses has been shown to aid machine learning in computational pathology. Of the several popular techniques for color normalization, structure preserving color normalization (SPCN) is well-motivated, convincingly tested, and published with its code base. However, SPCN makes occasional errors in color basis estimation leading to artifacts such as swapping the color basis vectors between stains or giving a colored tinge to the background with no tissue. We made several algorithmic improvements to remove these artifacts. Additionally, the original SPCN code is not readily usable on gigapixel whole slide images (WSIs) due to long run times, the use of proprietary software platform and libraries, and its inability to automatically handle WSIs. We completely rewrote the software such that it can automatically handle images of any size in popular WSI formats. Our software utilizes GPU-acceleration and open-source libraries that are becoming ubiquitous with the advent of deep learning. We also made several other small improvements and achieved a multifold overall speedup on gigapixel images, processing 10 9 pixels in 3 minutes. Our algorithm and software is usable right out-of-the-box by the computational pathology community.
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