Department of Limnology, Institute of Plant Biology, University of Zürich, Kilchberg CH-8802, Switzerland.
Cytometry A. 2010 Jan;77(1):76-85. doi: 10.1002/cyto.a.20810.
Quality assessment of autonomously acquired microscopic images is an important issue in high-throughput imaging systems. For example, the presence of low quality images (>or=10%) in a dataset significantly influences the counting precision of fluorescently stained bacterial cells. We present an approach based on an artificial neural network (ANN) to assess the quality of such images. Spatially invariant estimators were extracted as ANN input data from subdivided images by low level image processing. Different ANN designs were compared and >400 ANNs were trained and tested on a set of 25,000 manually classified images. The optimal ANN featured a correct identification rate of 94% (3% false positives, 3% false negatives) and could process about 10 images per second. We compared its performance with the image quality assessment by different humans and discuss the difficulties in assigning images to the correct quality class. The computer program and the documented source code (VB.NET) are provided under General Public Licence.
自动获取的微观图像的质量评估是高通量成像系统中的一个重要问题。例如,在一个数据集,如果存在质量差的图像(>=10%),则会显著影响荧光染色细菌细胞的计数精度。我们提出了一种基于人工神经网络(ANN)的方法来评估此类图像的质量。通过低水平图像处理,从细分图像中提取空间不变估计值作为 ANN 的输入数据。比较了不同的 ANN 设计,并在一组 25000 张手动分类的图像上训练和测试了>400 个 ANN。最佳 ANN 的正确识别率为 94%(3%的假阳性,3%的假阴性),每秒可以处理约 10 张图像。我们比较了它的性能与不同人类的图像质量评估,并讨论了将图像分配到正确质量类别的困难。计算机程序和记录的源代码(VB.NET)根据通用公共许可证提供。