Deep Convolution and Correlated Manifold Embedded Distribution Alignment for Forest Fire Smoke Prediction

Yaoli Wang, Xiaohui Liu, Maozhen Li, Wenxia Di, Lipo Wang
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引用次数: 6

Abstract

This paper proposes the deep convolution and correlated manifold embedded distribution alignment (DC-CMEDA) model, which is able to realize the transfer learning classification between and among various small datasets, and greatly shorten the training time. First, pre-trained Resnet50 network is used for feature transfer to extract smoke features because of the difficulty in training small dataset of forest fire smoke; second, a correlated manifold embedded distribution alignment (CMEDA) is proposed to register the smoke features in order to align the input feature distributions of the source and target domains; and finally, a trainable network model is constructed. This model is evaluated in the paper based on satellite remote sensing image and video image datasets. Compared with the deep convolutional integrated long short-term memory (DC-ILSTM) network, DC-CMEDA has increased the accuracy of video images by 1.50 %, and the accuracy of satellite remote sensing images by 4.00 %. Compared the CMEDA algorithm with the ILSTM algorithm, the number of iterations of the former has decreased to 10 times or less, and the algorithm complexity of CMEDA is lower than that of ILSTM. DC-CMEDA has a great advantage in terms of convergence speed. The experimental results show that DC-CMEDA can solve the problem of small sample smoke dataset detection and recognition.
森林火灾烟雾预测的深度卷积和相关流形嵌入分布对齐
本文提出了深度卷积和相关流形嵌入分布对齐(DC-CMEDA)模型,该模型能够实现各种小数据集之间和之间的迁移学习分类,大大缩短了训练时间。首先,针对森林火灾烟雾小数据集难以训练的问题,采用预训练好的Resnet50网络进行特征转移提取烟雾特征;其次,提出了一种相关流形嵌入分布对齐(CMEDA)方法对烟雾特征进行配准,以对齐源域和目标域的输入特征分布;最后,构造了一个可训练网络模型。本文基于卫星遥感图像和视频图像数据集对该模型进行了评估。与深度卷积集成长短期记忆(DC-ILSTM)网络相比,DC-CMEDA网络对视频图像的识别精度提高了1.50%,对卫星遥感图像的识别精度提高了4.00%。CMEDA算法与ILSTM算法相比,前者的迭代次数减少到10次以下,且CMEDA算法的复杂度低于ILSTM。DC-CMEDA在收敛速度上有很大的优势。实验结果表明,DC-CMEDA可以很好地解决小样本烟雾数据集的检测和识别问题。
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