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Training based cell detection from bright-field microscope images

机译:从明场显微镜图像中进行基于训练的细胞检测

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This paper proposes a framework for cell detection from bright-field microscope images. The method is trained using manually annotated images, and it uses Support Vector Machine classifiers with Histogram of Oriented Gradient features. The performance of the method is evaluated using 16 training and 12 test images with altogether 10736 human prostate cancer cells. Both the implementation and the annotated image database are released for download. The experiments consider various parameters and their effect on performance, and reaches accurate detection results with cross-validated AUC over 0.98, and mean relative deviation of 9 % from manually counted annotations in the growth curve over six days.
机译:本文提出了一种从明视场显微镜图像中进行细胞检测的框架。该方法使用手动注释的图像进行训练,并且使用带有定向梯度直方图特征的支持向量机分类器。使用总共10736个人类前列腺癌细胞的16个训练图像和12个测试图像来评估该方法的性能。实施和带注释的图像数据库均已发布以供下载。实验考虑了各种参数及其对性能的影响,在经过交叉验证的AUC超过0.98的情况下达到了准确的检测结果,并且在六天内与生长曲线中手动计数的注释的平均相对偏差为9%。

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