利用卷积神经网络实现基于视觉的废物类型检测

Bayu Yasa Wedha, Ira Diana Sholihati, Sari Ningsih
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引用次数: 0

摘要

废物检测在确保有效的废物管理方面发挥着至关重要的作用。卷积神经网络可用于视觉垃圾检测,以改善垃圾管理。本研究使用的数据集涵盖了各种类别的废物,如塑料、纸张、金属、玻璃、垃圾和纸板。卷积神经网络的创建和训练采用了精细的架构,以获得精确的分类结果。在模型开发阶段,重点是利用迁移学习技术来实现卷积神经网络。利用预先训练好的模型,可以丰富废弃物特征的表征,从而加快和改进学习过程。通过使用训练模型中的信息,卷积神经网络可以更准确地区分各类废物的具体属性。利用迁移学习可以让模型适应真实世界的场景,从而提高其概括能力,并准确识别可能在外观上表现出显著差异的废物。将这些方法结合起来,可以提高在不同环境条件下识别废物的能力,促进有效的废物管理,并适应当代环境修复的需要。模型评估结果表明其性能令人满意,识别准确率约为 73%。此外,还在真实环境下进行了实验,以评估系统在现实环境下的可靠性。这项研究为废物检测系统的发展做出了宝贵的贡献,该系统能以最佳效率融入废物管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation Convolutional Neural Network for Visually Based Detection of Waste Types
Waste detection plays an essential role in ensuring efficient waste management. Convolutional Neural Networks are used in visual waste detection to improve waste management. This study uses a data set that covers various categories of waste, such as plastic, paper, metal, glass, trash, and cardboard. Convolutional Neural Networks are created and trained with refined architecture to achieve precise classification results. During the model development stage, the focus is on utilizing transfer learning techniques to implement Convolutional Neural Networks. Utilizing pre-trained models will speed up and improve the learning process by enriching the representation of waste features. By using the information embedded in the trained model, the Convolutional Neural Network can differentiate the specific attributes of various waste categories more accurately. Utilizing transfer learning allows models to adapt to real-world scenarios, thereby improving their ability to generalize and accurately identify waste that may exhibit significant variation in appearance. Combining these methodologies enhances the ability to identify waste in diverse environmental conditions, facilitates efficient waste management, and can be adapted to contemporary needs in environmental remediation. The model evaluation shows satisfactory performance, with a recognition accuracy of about 73%. Additionally, experiments are conducted under authentic circumstances to assess the reliability of the system under realistic circumstances. This study provides a valuable contribution to the advancement of waste detection systems that can be integrated into waste management with optimal efficiency.
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