基于SURF-BoW和多类SVM图像处理算法的新型智能垃圾分类系统

Yijian Liu, King-Chi Fung, Wenqian Ding, Hongfei Guo, T. Qu, Cong Xiao
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引用次数: 12

摘要

针对智能环卫的垃圾分类问题,本文提出了一种新型智能垃圾分类系统,该系统由硬件系统和软件系统两子系统组成。硬件系统是基于树莓派核心模块的垃圾桶框架,软件系统是基于SURF-BoW算法和多类SVM分类器的图像分类算法平台。在我们的实验中,训练和测试过程中产生的图像都是从我们系统的网络摄像头中获得的,并进行了仿射变换和加噪操作。实验结果表明,在五类垃圾中,电池垃圾的分类准确率最高,达到100%。平均分类准确率达到83.38%。因此,本系统具有可靠的实用性和鲁棒性,有望应用于处理我们日常生活中的垃圾分类问题。
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Novel Smart Waste Sorting System based on Image Processing Algorithms: SURF-BoW and Multi-class SVM
Aiming at solving the waste sorting problems of smart environmental sanitation, this paper proposes a novel smart waste sorting system, which consists of two sub-systems including a hardware system and a software system. The hardware system is of a trash bin framework based on the core module Raspberry Pi and the software one is of an image classification algorithm platform based on SURF-BoW algorithm and multi-class SVM classifier. In our experiment, the images produced during training and testing are both obtained from webcam in our system and extra processing with affine transformation and noise-adding operation. The experimental results show that among the five categories of waste, the battery waste performs best with 100% classification accuracy. Besides, the average classification accuracy is up to 83.38%. Therefore, our system has reliable practicability and robustness, which is expected to be applied to deal with the waste sorting problems in our daily life.
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