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A new method for segmentation of microscopic images on activated sludge

机译:活性污泥显微图像分割的新方法

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Activated sludge samples were taken from the Konya Wastewater Treatment Plant. Two hundred images for each sample were captured by a systematic examination of the slides. Segmentation of microscopic images is a challenging process due to lack of focus. Therefore, adjustment of the focus is required for every movement of the mobile stage. Because the mobile stage does not have the z axis, the focus cannot be adjusted. A new method that uses automatic segmentation of the captured images is developed for solving this problem. The proposed method is not dependent on image content, has minimal computation complexity, and is robust to noise. This method uses a cellular neural network (CNN) in which an adaptive iterative value is calculated by wavelet transform and spatial frequency. A model is fixed in the system in order to estimate the iterative value of the CNN. Integrated automatic image capture and automatic analysis of large numbers of images by using evaluation software are improved in our system. Approximately 1000 microscopic images are processed in this experiment. The proposed method is compared with the traditional threshold method and the CNN through constant iteration. The experimental results are given. s{-1mm}
机译:活性污泥样品取自科尼亚废水处理厂。通过对载玻片的系统检查,每个样品可获取200张图像。由于缺乏焦点,显微图像的分割是一个具有挑战性的过程。因此,移动台的每次移动都需要调整焦点。由于移动平台没有z轴,因此无法调整焦点。为了解决该问题,开发了一种使用捕获的图像的自动分割的新方法。所提出的方法不依赖于图像内容,具有最小的计算复杂度,并且对噪声具有鲁棒性。该方法使用细胞神经网络(CNN),其中通过小波变换和空间频率来计算自适应迭代值。为了估计CNN的迭代值,系统中固定了一个模型。我们的系统改进了集成的自动图像捕获和使用评估软件自动分析大量图像的功能。在此实验中处理了大约1000个显微图像。通过不断的迭代,将所提出的方法与传统的阈值方法和CNN进行了比较。给出了实验结果。 vs {-1mm}

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