Counting microbial colonies is a fundamental task in microbiology and has many applications in numerous industry branches. Despite this, current studies towards automatic microbial counting using artificial intelligence are hardly comparable due to the lack of unified methodology and the availability of large datasets. The recently introduced AGAR dataset is the answer to the second need, but the research carried out is still not exhaustive. To tackle this problem, we compared the performance of three well-known deep learning approaches for object detection on the AGAR dataset, namely two-stage, one-stage and transformer based neural networks. The achieved results may serve as a benchmark for future experiments.
翻译:计数微生物群是微生物学的一项基本任务,在许多工业分支中有许多应用。尽管如此,由于缺乏统一的方法和大型数据集的可用性,目前关于使用人工智能自动微生物计数的研究几乎无法进行比较。最近引进的AGAR数据集是第二个需要的答案,但所进行的研究仍然不是详尽无遗的。为了解决这一问题,我们比较了AGAR数据集中三个众所周知的物体探测深层学习方法的绩效,即两个阶段、一个阶段和以变异器为基础的神经网络。所取得的结果可作为未来实验的基准。