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Evaluation of Plastic Waste Classification Systems

机译:塑料废物分类系统评估

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Aim: A comparison study of three classifiers was carried out to identify the best classifier which can be utilized to automate and enhance the manual process of identifying and sorting plastic waste. Place and Duration of Study: Department of Computer Science and Engineering, Obafemi Awolowo University, between April 2014 and September 2015. Methodology: Collection of plastic wastes data from purposely selected disposal sites was done and the distinguishing characteristics (average spectrum power and shape area) of those plastic wastes were computed and used as feature data. The three classifiers designed using machine leaning and statistical techniques were implemented in the MATLAB environment. The classifiers are Fuzzy inference system, multi-layer perceptron and linear discriminant analysis. The efficiency of the three classifiers was compared using mean square error, mean absolute error and receiver operating characteristics. Results: It was observed that the classifier designed using artificial neural network had the lowest mean absolute (0.07) and mean square error (0.07), compared to other classifiers. More so, the neural network model had the highest correct classification accuracy of 92.98% as against 87.72% and 75.44% recorded for fuzzy inference system and linear discriminant analysis, respectively. Conclusion: The study has successfully classified plastic waste data using the spectrum power from the sound signal produced from plastics and the plastic's shape area. Thus, confirming that sound wave signal from plastic could be utilized as feature data in plastic waste identification.
机译:目的:对三个分类器进行了比较研究,以找出最佳分类器,该分类器可用于自动化和增强识别和分类塑料废物的手动过程。研究的地点和时间:2014年4月至2015年9月,在Obafemi Awolowo大学计算机科学与工程系。这些塑料废物中的一半被计算出来并用作特征数据。在MATLAB环境中实现了使用机器学习和统计技术设计的三个分类器。分类器是模糊推理系统,多层感知器和线性判别分析。使用均方误差,平均绝对误差和接收器工作特性比较了三个分类器的效率。结果:观察到,与其他分类器相比,使用人工神经网络设计的分类器具有最低的平均绝对值(0.07)和均方差(0.07)。而且,神经网络模型的正确分类准确率最高,为92.98%,而模糊推理系统和线性判别分析的正确分类准确率分别为87.72%和75.44%。结论:该研究已成功利用塑料产生的声音信号的频谱功率和塑料的形状区域对塑料废物数据进行了分类。因此,确认来自塑料的声波信号可以用作塑料废物识别中的特征数据。

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