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基于多模態數據融合的邊緣設備輕量級垃圾分類方法和系統研究

Lightweight garbage classification methods and systems for edge devices based on multimodal data fusion

  • 摘要: 隨著人工智能技術的發展,基于神經網絡的垃圾分類方法成為解決垃圾處理問題的重要手段,并得到了廣泛應用. 但對于邊緣設備而言,神經網絡的可更新性與準確率提升仍需進一步研究. 本文提出了一種面向邊緣設備的垃圾分類方法和系統. 首先,為解決神經網絡在增量學習時面臨的遺忘問題,本文采用多步知識蒸餾對AlexNet網絡進行類別增量學習,形成了適用于垃圾分類的教師–助教–學生模型,使得AlexNet網絡在學習新類別時保持對舊類別的判斷能力. 其次,為克服圖像特征不明顯導致分類準確率降低的問題,本文引入了金屬傳感器數據和重量傳感器數據,通過Q-learning算法將圖像分類結果與多傳感器數據進行加權融合,提高了分類的準確率和魯棒性. 最后,本文在樹莓派4B平臺上設計與實現了垃圾分類系統,并在公開數據集TrashNet和自建數據集上進行了對比實驗. 實驗結果表明,所實現的垃圾分類系統在自建數據集的垃圾分類任務中平均分類準確率達到89.7%,單次分類平均所需時間為130 ms,實現了快速準確的垃圾分類,相較基于MobileNetV3的嵌入式算法提升了6.5%的準確率.

     

    Abstract: Owing to the development of artificial intelligence technology, garbage classification methods based on neural networks have become important for solving waste disposal problems and have been widely applied. However, for edge devices, the upgradability of neural networks and the improvement in their accuracy require further research. Hence, this study proposes a waste classification method and system for edge devices. The system applies deep learning methods to garbage classification and identification, combines multistep knowledge distillation technology for class-incremental learning, and uses an adaptive weighted fusion algorithm to fuse image classification results and multisensor data. Specifically, to address the problem of catastrophic forgetting presented by neural networks during incremental learning, this study employs multistep knowledge distillation to perform class-incremental learning on the AlexNet network. This approach forms a teacher–assistant–student model suitable for waste classification, enabling the AlexNet network to maintain its ability to recognize old classes while learning new ones. Simultaneously, all potential distillation paths are evaluated on the CIFAR-100 dataset, and the optimal distillation path is determined. The feasibility and effectiveness of the proposed method in solving catastrophic forgetting are demonstrated by comparing different algorithms in 100 categories of category incremental learning experiments. Additionally, to address the reduced classification accuracy of the convolutional neural network when the features of the garbage image to be classified are concealed or confused, this study uses multisensor data. External weight sensors and metal detectors are connected to an embedded device to determine the weight and metal characteristics of the garbage. This study employs the Q-learning algorithm to perform a weighted fusion of the classification results from the AlexNet network with weight and metal features. The state space, action space, and reward space of the problem are defined, which prevents misclassification caused by ambiguous features and feature confusion in the classification images, thereby improving the classification accuracy. By comparing the proposed algorithm with the AlexNet algorithm and other multisensor garbage classification algorithms, an improvement in the classification accuracy is demonstrated. Finally, waste classification methods are applied to edge devices and designs, and an intelligent waste classification system is developed. Raspberry Pi 4B is selected as the embedded platform for deploying the AlexNet network. The system is equipped with modules such as a camera, metal detector, and weight sensor to obtain multimodal data, and a system workflow is established. To verify the performance of the proposed system, comparative experiments are conducted using the public dataset TrashNet and a self-developed dataset. The experimental results show that the designed classification system achieves an average classification accuracy of 89.7% in the garbage classification task of the self-developed dataset, and that the average time required for a single classification is 130 ms, demonstrating rapid and accurate garbage classification. Compared with an embedded algorithm based on MobileNetV3, the accuracy rate of the proposed system improved by 6.5%. The design and implementation of the system consider actual application scenarios, offer strong practicality and promotional value, and provide a useful approach for the application of garbage classification technology.

     

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