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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Semantic versus instance segmentation in microscopic algae detection
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Semantic versus instance segmentation in microscopic algae detection

机译:微观藻类检测中的语义与实例分割

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Microscopic algae segmentation, specifically of diatoms, is an essential procedure for water quality assessment. The segmentation of these microalgae is still a challenge for computer vision. This paper addresses for the first time this problem using deep learning approaches to predict exactly those pixels that belong to each class, i.e., diatom and non diatom. A comparison between semantic segmentation and instance segmentation is carried out, and the performance of these methods is evaluated in the presence of different types of noise. The trained models are then evaluated with the same raw images used for manual diatom identification. A total of 126 images of the entire field of view at 60x magnification, with a size of 2592x1944 pixels, are analyzed. The images contain 10 different taxa plus debris and fragments. The best results were obtained with instance segmentation achieving an average precision of 85% with 86% sensitivity and 91% specificity (up to 92% precision with 98%, both sensitivity and specificity for some taxa). Semantic segmentation was able to improve the average sensitivity up to 95% but decreasing the specificity down to 60% and precision to 57%. Instance segmentation was also able to properly separate diatoms when overlap occurs, which helps estimate the number of diatoms, a key requirement for water quality grading.
机译:显微镜下的藻类细分,特别是硅藻的细分,是水质评估的必要程序。这些微藻的细分仍然是计算机视觉的挑战。本文首次使用深度学习方法解决了这个问题,以准确预测属于每个类别(即硅藻和非硅藻)的那些像素。进行了语义分割和实例分割之间的比较,并在存在不同类型的噪声的情况下评估了这些方法的性能。然后,使用与手动硅藻识别相同的原始图像对训练后的模型进行评估。分析了60倍放大倍率下的整个视场的126张图像,大小为2592x1944像素。图像包含10个不同的分类单元以及碎片和碎片。实例分割获得最佳结果,其平均精度达到85%,灵敏度为86%,特异性为91%(某些分类单元的灵敏度和特异性均达到92%,精度为98%)。语义分割能够将平均灵敏度提高到95%,但将特异性降低到60%,将精度降低到57%。实例分割还能够在发生重叠时适当地分离硅藻,这有助于估计硅藻的数量,这是水质分级的关键要求。

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