基于SE-ResNet的智能分类可压缩垃圾桶设计

Design of Intelligent Classification Compressible Garbage Bin Based on SE-ResNet

  • 摘要: 为了实现生活垃圾的智能、高效和准确分拣,本文提出了一种基于Squeeze-and-Excitation(SE)注意力机制改进型ResNet深度神经网络的智能垃圾分类装置,用于实现智能垃圾分类任务。基于闭环矢量法对分拣机构进行尺寸优化设计,并结合虚功原理计算舵机输出功率,为舵机选型提供理论依据。在网络模型中引入通道注意力机制,使各通道之间有效交互和选择,实现通道信息的充分利用。控制系统基于 Arduino Mega 2560进行传感器信号采集,并通过串口与 NVIDIA Jetson NX 通信,结合投放运动控制算法,实现电机与舵机的精确控制。此外,该系统配备有特制的压缩装置,通过对可压缩垃圾进行机械挤压以提升空间利用率。为了验证系统对垃圾分类的准确性,采用12种常见的生活垃圾对智能分类垃圾桶进行了测试,实验结果表明基于SE-ResNet深度神经网路的垃圾平均识别准确率高达95.83%,能够满足实际应用需求。

     

    Abstract: This study proposes an intelligent waste classification system based on an SE-enhanced ResNet deep neural network to achieve accurate and efficient domestic waste sorting. The proposed model integrates channel-wise attention mechanisms to improve classification performance. The structural dimensions of sorting mechanism are optimized using the closed-loop vector method, while the output power of the motor is calculated based on the principle of virtual work, providing a theoretical basis for motor selection. A channel attention mechanism is integrated into the network model to facilitate effective interaction and selection among channels, thereby enhancing the utilization of channel information. The control system employs an Arduino Mega 2560 for sensor data acquisition and communicates with an NVIDIA Jetson NX via serial interface. Combined with a throwing motion control algorithm, this enables precise control of motors. Additionally, the system features a custom-designed compression unit that mechanically compresses compressible waste to improve space utilization. To evaluate the classification accuracy, the system was tested using twelve common types of household waste. Experimental results demonstrate that the SE-ResNet-based deep neural network achieves an average recognition accuracy of up to 95.83%, meeting practical application requirements.

     

/

返回文章
返回