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首页> 外文期刊>Transactions of the ASABE >Adpative image processing methods for improving contaminant detection accuracy.
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Adpative image processing methods for improving contaminant detection accuracy.

机译:自适应图像处理方法,用于提高污染物检测的准确性。

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摘要

A real-time multi-spectral imaging system has demonstrated a science-based tool for faecal and ingesta contaminant detection during poultry processing. In order to implement this imaging system in the commercial poultry processing industry, the false positives must be removed. To do this, we tested and implemented additional image processing algorithms including binning, cuticle removal filter, median filtering, and morphological analysis in real-time mode to maximize detection accuracy and minimize false positives (FPs). The median filtering and binning processes were able to reduce FPs up to 98.7% and 95.2%, respectively, by eliminating most of the salt-and-pepper noise from the raw images. The detection accuracy varied with the parameter values of the image processing algorithms, including binning, thresholding, median filtering, and morphological analysis. Overall contaminant detection accuracy on moving birds varied from 84.3% to 97.8%, and FP errors were 1.9% and 41.8%, respectively. Although neither the overall detection accuracy nor FP errors were affected by the camera gain, the detection accuracy results changed slightly, from 87.4% to 95.1%. In this case, the FP errors were 1.8% and 15.9%, respectively. Thus, the USDA-ARS multispectral imaging system was able to detect contaminants with 91.6% accuracy and 3.3% FP errors by selecting optimum image processing methods at a processing speed of 140 birds per minute.
机译:实时多光谱成像系统已经展示了一种基于科学的工具,可在禽类加工过程中检测粪便和摄入的污染物。为了在商业家禽加工业中实施该成像系统,必须消除误报。为此,我们测试并实施了其他图像处理算法,包括装箱,表皮去除过滤器,中值滤波和实时模式下的形态分析,以最大程度地提高检测准确性并最大程度减少假阳性(FP)。通过消除原始图像中的大部分盐和胡椒噪声,中值滤波和分箱过程能够分别将FP分别降低98.7%和95.2%。检测精度随图像处理算法的参数值而变化,包括合并,阈值,中值滤波和形态分析。迁徙禽类的总体污染物检测准确度在84.3%至97.8%之间,FP误差分别为1.9%和41.8%。尽管整体检测精度和FP误差均不受相机增益的影响,但检测精度结果略有变化,从87.4%变为95.1%。在这种情况下,FP误差分别为1.8%和15.9%。因此,USDA-ARS多光谱成像系统能够通过选择最佳图像处理方法,以每分钟140只禽的处理速度,以91.6%的准确度和3.3%的FP误差检测污染物。

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