自动餐具检测:两种新方法的应用与比较

Trung H. Duong, Mohsen Emami, L. L. Hoberock
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引用次数: 3

摘要

目前的商业洗碗系统涉及在高温和潮湿的环境中洗碗前后人工装载、分类、检查和卸载盘子和银器。在这种艰苦的工作条件下,导致低薪员工的高流动率,自动化是可取的,特别是在医院、海军舰艇、学校、酒店和其他餐饮设施的大型厨房。我们的项目是开发一种集成的机器视觉分拣和检测系统的一部分,该系统用于对飞机型商用洗碗机中混合的盘子碎片和银器进行分拣和检测,并附有自动装卸。提出了两种自动检测餐具清洁度的新方法,即自适应阈值法和最大显著性图法。在第一种方法的基础上,提出了一种将分割和自适应阈值法结合全局阈值法的新方法。对于第二种方法,我们提出了一种新的归一化技术。这两种算法都是快速、简单的,并且产生的结果与光照条件和天线围绕相机-天线轴的旋转不一致。通过MatlabÒ R14和Image Processing Toolbox V5.0编写算法,对我们的盘子组中51个独立的盘子(无论是干净的还是脏的)在不同的光照条件下拍摄的110张盘子图像进行测试,其中77张图像来自脏盘子,这些盘子中有799个脏点。自适应阈值法区分脏盘子和脏盘子的准确率分别为95.0%和96.5%。而最大显著性图法在区分干净和脏盘子上的准确率为100%,在脏斑检测上的准确率为93.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Dishware Inspection: Applications and Comparisons of Two New Methods
Commercial dishwashing systems currently involve human loading, sorting, inspecting, and unloading dishes and silverware pieces before and after washing in hot and humid environments. In such difficult working conditions, leading to high turn-over of low-paid employees, automation is desirable, especially in large-scale kitchens of hospitals, navy ships, schools, hotels and other dining facilities. Our project is a part of developing an integrated machine vision sorting and inspecting system for mixed dish pieces and silverware exiting a flight-type commercial dishwashing machine, coupled with automatic loading and unloading. We propose two new methods for automatically inspecting dish cleanliness, namely adaptive thresholding and maximum saliency map. On the first method, a new technique using partitioning and adaptive thresholding, combined with global thresholding are introduced. On the second method, we propose a new normalization technique. Both algorithms are fast, simple, and produce results invariant with lighting conditions and dish rotation about the camera-dish axis. Algorithms are written and tested by MatlabÒ R14 and Image Processing Toolbox V5.0 to 110 dish images taken in different lighting condition using different position of 51 separate dishes (either clean or dirty) of our dish set, in which 77 images are from dirty dishes with 799 dirty points in these dishes. The adaptive thresholding method produces 95.0% and 96.5% accuracies in discriminating clean from dirty dishes and dirty spot detection, respectively. While the maximum saliency map method produces 100% accuracies in discriminating clean from dirty dishes and 93.5% accuracies in and dirty spot detection.
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