The use of Environmental Microorganisms (EMs) offers a highly efficient, low cost and harmless remedy to environmental pollution, by monitoring and decomposing of pollutants. This relies on how the EMs are correctly segmented and identified. With the aim of enhancing the segmentation of weakly visible EM images which are transparent, noisy and have low contrast, a Pairwise Deep Learning Feature Network (PDLF-Net) is proposed in this study. The use of PDLFs enables the network to focus more on the foreground (EMs) by concatenating the pairwise deep learning features of each image to different blocks of the base model SegNet. Leveraging the Shi and Tomas descriptors, we extract each image's deep features on the patches, which are centered at each descriptor using the VGG-16 model. Then, to learn the intermediate characteristics between the descriptors, pairing of the features is performed based on the Delaunay triangulation theorem to form pairwise deep learning features. In this experiment, the PDLF-Net achieves outstanding segmentation results of 89.24%, 63.20%, 77.27%, 35.15%, 89.72%, 91.44% and 89.30% on the accuracy, IoU, Dice, VOE, sensitivity, precision and specificity, respectively.
翻译:环境微生物(EMs)的使用通过监测和分解污染物,为环境污染提供了高效、低成本和无害的补救方法。这取决于EMs是如何正确分割和辨别的。为了加强透明、吵闹和对比度低的微弱可见的EM图象的分解,本研究建议使用一个对称深学习特征网络(PDLF-Net)。使用PDLFs使网络能够将每个图像的对称深层学习特征配置到基准模型SegNet的不同部分,从而更加关注地表层(EMs)。利用Shimm和Tomas的解码器,我们利用VGG-16模型将每个描述符集中到每个描述符处的每幅图象的深度特征进行提取。然后,根据Delaunay三角图解析,将特征配对成对称深层学习特征。在这次实验中,PDLFNet的精确度分别为89.24%、93.20%、35.27%、35.7%和VO的精确度。