基于计算机视觉的蔬菜中活菌总数快速检测

    Rapid method for enumeration of total viable bacteria in vegetables based on computer vision

    • 摘要: 为了开发一种蔬菜中活菌总数的快速检测系统,综合利用活体染色、计算机视觉、图像处理、人工神经网络等技术。采用亚甲基蓝作为活体染色剂来区分活菌和死菌,用分辨率为520万像素的数字摄像机拍摄细菌内部的染色效果,并确定了有效提取活菌图像的新算法。根据细菌的形态学特征选择偏心率、圆形度、矩形度等8个特征参数,作为人工神经网络的输入向量来对细菌进行识别。该系统操作简单,且每个样品的检测时间少于40 min,远远小于传统的平板计数法的48 h。其检测结果与平板计数法检测结果的相关性为0.9987,且两者不存在显著性差异(T检验,P>0.05)。因此该检测系统可以很好的适应农产品安全现场快速检测的要求。

       

      Abstract: In order to develop an automatic and rapid detection system for enumeration of total viable bacteria in vegetables, viable staining technology, computer vision, image processing and artificial neural network were used. The methylene blue was used as a vital stain agent to distinguish the viable bacteria from the non-viable bacteria, and the CCD digital camera with 5 200 000 pixels was used to capture the staining effect within the bacteria. Moreover, a new algorithm which could extract the viable bacterial images successfully was determined. According to the bacterial shape features, eight feature parameters (eccentricity, circularity, rectangle degree, et al.) were selected to be the input vectors of the artificial neural network in order to identify the bacteria. The proposed detection system was easy to operate. By using this rapid detection system, total viable bacteria counts in samples could be accurately enumerated within 40 min, which was much less than 48 h by using the traditional aerobic plate count method. Moreover, comparisons of detective results of total bacteria counts by rapid automatic detection system and aerobic plate count method were made, they were closely correlated (R2=0.9987). And the T test results also showed that there was no significant difference (P>0.05) between these two detection results. Therefore, the rapid detection system will greatly adapt to the requests of on-site rapid detection technique for the safety of agricultural products.

       

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