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Polyth-Net: Classification of Polythene Bags for Garbage Segregation Using Deep Learning

机译:Polyth-net:使用深度学习的垃圾分离的聚乙烯袋分类

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Polythene has always been a threat to the environment since its invention. It is non-biodegradable and very difficult to recycle. Even after many awareness campaigns and practices, Separation of polythene bags from waste has been a challenge for human civilization. The primary method of segregation deployed is manual handpicking, which causes a dangerous health hazards to the workers and is also highly inefficient due to human errors. In this paper I have designed and researched on image-based classification of polythene bags using a deep-learning model and its efficiency. This paper focuses on the architecture and statistical analysis of its performance on the data set as well as problems experienced in the classification. It also suggests a modified loss function to specifically detect polythene irrespective of its individual features. It aims to help the current environment protection endeavours and save countless lives lost to the hazards caused by current methods.
机译:自发明以来,聚乙烯一直是对环境的威胁。它是不可生物降解的,非常难以回收。即使在许多意识活动和实践之后,从废物中分离多党袋是人类文明的挑战。部署的偏析的主要方法是手动手术,这对工人造成危险的健康危害,并且由于人为错误也是高效的。在本文中,我设计并研究了使用深学习模型及其效率的基于图像的聚乙烯袋的分类。本文重点介绍其对数据集的性能的架构和统计分析以及分类中的问题。它还提出了一种改进的损失功能,以特异性地检测聚乙烯,而不管其单独的特征如何。它旨在帮助目前的环境保护努力,并节省无数的生命损失目前方法引起的危险。

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