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Detection of abnormal nuclei in cervical smear images based on visual attention model

机译:基于视觉注意模型的颈椎涂片图像异常核检测

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A novel idea for detecting abnormal nuclei in cervical smear images is presented. The suspect cells often appear with different externals from surrounding normal ones. Therefore, we are able to find them and focus on processing them instead of segmenting all nuclei in the images. This method combines the bottom-up attention mechanism and the top-down target-driven detection method. We extract both direction and brightness features of the image and construct a saliency map which is linearly combined with the high response area detected using annular template matching method. Then, we use an inhibition-of-return as well as winner-take-all mechanism to detect the regions of interest one by one. This process will be followed by segmentation and recognition of the found nuclei. The satisfactory results on extraction and computing speed show that this model can extract the abnormal nucleus regions without processing other part of the image.
机译:提出了一种检测宫颈涂片图像中异常核的新思想。疑似细胞通常出现在周围正常的外部不同的外部。因此,我们能够找到它们并专注于处理它们而不是分割图像中的所有核。该方法结合了自下而上的注意机制和自上而下目标驱动检测方法。我们提取图像的两个方向和亮度特征,并构造显着图,该显着图与使用环形模板匹配方法检测到的高响应区域线性地结合。然后,我们使用返回的抑制以及获胜者 - 所有机制,以检测一个接一个地区的区域。此过程后面将被分割和识别发现的核。提取和计算速度的令人满意的结果表明,该模型可以在不加工图像的其他部分的情况下提取异常核区域。

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