多分支特征融合的PV红外热点分类算法

Han Zhou
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引用次数: 0

摘要

为了提高经典的基于深度学习的红外图像分类算法的网络准确率,本文设计了一种多分支特征融合分类算法。首先,该算法采用多分辨率子网并行连接方法构建整体网络架构。然后,设计了轻量化结构模块,以减少网络权重参数的计算量;引入通道关注模块,以细化特征通道,提高检测精度。最后,设计空间金字塔的平行连接模式,增强特征语义表达能力。实验结果表明,本文提出的算法模型提高了精度,并对参数进行了优化。准确率可达97.6%。该算法是对当前主流分类算法的创新,具有良好的推广应用效果。
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PV infrared hot spot classification algorithm with multi-branch feature fusion
This paper designs a multi-branch feature fusion classification algorithm to improve the network accuracy of the classical deep learning-based infrared image algorithms. First, the algorithm uses a multi-resolution sub-network parallel connection method to build the overall network architecture. Then, a lightweight structural module is designed to reduce the computational load of network weight parameters, and a channel attention module is introduced to refine feature channels and improve detection accuracy. Finally, the parallel connection mode of the spatial pyramid is designed to enhance the ability of feature semantic expression. The experimental results show the improved accuracy of the algorithm model proposed in this paper and the optimization of parameters. The accuracy rate can reach 97.6%. The proposed algorithm is an innovation to the current mainstream classification algorithm, which reflects good promotion and application.
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