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Automatic Object Detection Using DBSCAN for Counting Intoxicated Flies in the FLORIDA Assay

机译:使用DBSCAN在FLORIDA分析中自动检测毒蝇

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In this paper, we propose an instrumentation and computer vision pipeline that allows automatic object detection on images taken from multiple experimental set ups. We demonstrate the approach by autonomously counting intoxicated flies in the FLORIDA assay. The assay measures the effect of ethanol exposure onto the ability of a vinegar fly Drosophila melanogaster to right itself. The analysis consists of a three-step approach. First, obtaining an image of a large set of individual experiments, second, identify areas containing a single experiment, and third, discover the searched objects within the experiment. For the analysis we facilitate well-known computer vision and machine learning algorithms - namely color segmentation, threshold imaging and DBSCAN. The automation of the experiment enables an unprecedented reproducibility and consistency, while significantly decreasing the manual labor.
机译:在本文中,我们提出了一种仪器和计算机视觉流水线,该流水线允许对从多个实验设置拍摄的图像进行自动目标检测。我们通过在FLORIDA分析中自主计数中毒的苍蝇来证明该方法。该测定法测量了乙醇暴露对醋蝇果蝇(Drosophila melanogaster)自身纠正能力的影响。分析包括三个步骤。首先,获取大量独立实验的图像,其次,确定包含单个实验的区域,然后,发现实验中搜索到的对象。为了进行分析,我们促进了著名的计算机视觉和机器学习算法-即颜色分割,阈值成像和DBSCAN。实验的自动化实现了前所未有的可重复性和一致性,同时大大减少了人工劳动。

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