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Visual-based trash detection and classification system for smart trash bin robot

机译:基于视觉的智能垃圾桶机器人垃圾分类系统

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This paper presents a trash detection and classification system that will be implemented on a social-education trash bin robot. The robot is expected can be implemented in public facilities, like airport, railway station, hall and more which is there are a lot of people that potentially producing waste. We use Haar-Cascade method to first detect any objects on the floor. Then, Gray-Level Co-Occurrence Matrix (GLCM) and Histogram of Oriented Gradient (HOG) are combined to get a set of features. Support Vector Machines (SVM) is used to classify the features into organic waste, non-organic waste, and non-waste. Offline testing of classification system using 5-fold Cross Validation method obtain 82,7% of accuracy. Online testing of detection and classification system obtain 63.5% of accuracy with the best distance gained when the camera is tilted down to -40° with minimum distance for detection is 80 cm and 200 cm for maximum detection. By using this robot, it is expected to help instill the habit of disposing of garbage in the right place. The purpose of this research is making people aware of handling their waste in the right way and hopefully, it can reduce the waste problem.
机译:本文介绍了将在社会教育垃圾桶机器人上实现的垃圾检测和分类系统。预计该机器人可以在公共设施中使用,例如机场,火车站,大厅等,那里有很多人可能产生废物。我们使用Haar-Cascade方法首先检测地板上的任何物体。然后,将灰度共生矩阵(GLCM)和定向梯度直方图(HOG)组合在一起以获得一组特征。支持向量机(SVM)用于将要素分类为有机废物,非有机废物和非废物。使用5倍交叉验证方法对分类系统进行脱机测试可获得82.7%的准确性。在线检测和分类系统测试可获得63.5%的精度,当相机向下倾斜至-40°时,最佳距离为最佳距离,最小检测距离为80 cm,最大检测距离为200 cm。通过使用该机器人,有望有助于在正确的地方灌输处理垃圾的习惯。这项研究的目的是使人们意识到以正确的方式处理废物,并希望可以减少废物问题。

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