Evolutionary Optimization of Neural Networks for Fire Recognition

M. Kandil, S. Shahin, A. Atiya, M. Fayek
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引用次数: 1

Abstract

In this paper, the new hybrid algorithm is used as real time fire recognition algorithm in visual image sequences. For the purposes of real time fire pattern recognition tasks neural networks (NNs) are typically trained with respect of error function minimization by propagating a linear sum of errors. Recent studies in the fire vision recognition have confronted the problem of the inconstant and different shapes of fire which required improving generalization of the NNs. Experimental evidence is presented in this study demonstrating the general application potential of the framework by generating populations of ENN for recognition with a large number of fire shapes in different images, to show that our hybrid algorithm is capable of detecting real time fire vision by improving the generalization of NNs
火灾识别神经网络的进化优化
本文将这种新的混合算法作为视觉图像序列中的实时火焰识别算法。对于实时火力模式识别任务,神经网络通常通过传播线性误差和来进行误差函数最小化的训练。近年来的火灾视觉识别研究面临着火灾形状多变的问题,对神经网络的泛化能力提出了更高的要求。本研究提供了实验证据,通过生成用于识别不同图像中大量火焰形状的ENN种群,证明了该框架的一般应用潜力,并表明我们的混合算法能够通过提高神经网络的泛化来检测实时火焰视觉
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