KutralNext: An Efficient Multi-label Fire and Smoke Image Recognition Model

Angel Ayala, David Macêdo, C. Zanchettin, Francisco Cruz, Bruno Fernandes
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引用次数: 1

Abstract

Early alert fire and smoke detection systems are crucial for management decision making as daily and security operations. One of the new approaches to the problem is the use of images to perform the detection. Fire and smoke recognition from visual scenes is a demanding task due to the high variance of color and texture. In recent years, several fire-recognition approaches based on deep learning methods have been proposed to overcome this problem. Nevertheless, many developments have been focused on surpassing previous state-of-the-art model's accuracy, regardless of the computational resources needed to execute the model. In this work, is studied the trade-off between accuracy and complexity of the inverted residual block and the octave convolution techniques, which reduces the model's size and computation requirements. The literature suggests that those techniques work well by themselves, and in this research was demonstrated that combined, it achieves a better trade-off. We proposed the KutralNext architecture, an efficient model with reduced number of layers and computacional resources for singleand multi-label fire and smoke recognition tasks. Additionally, a more efficient KutralNext+ model improved with novel techniques, achieved an 84.36% average test accuracy in FireNet, FiSmo, and FiSmoA fire datasets. For the KutralSmoke and FiSmo fire and smoke datasets attained an 81.53% average test accuracy. Furthermore, state-of-the-art fire and smoke recognition model considered, FireDetection, KutralNext uses 59% fewer parameters, and KutralNext+ requires 97% fewer flops and is 4x faster.
KutralNext:一种高效的多标签火灾和烟雾图像识别模型
早期火灾和烟雾探测系统对于日常和安全操作的管理决策至关重要。解决这个问题的新方法之一是使用图像来执行检测。由于颜色和纹理的高度变化,从视觉场景中识别火灾和烟雾是一项艰巨的任务。近年来,人们提出了几种基于深度学习方法的火焰识别方法来克服这一问题。尽管如此,许多发展都集中在超越以前最先进的模型的准确性上,而不考虑执行模型所需的计算资源。在此工作中,研究了倒立残差块和八度卷积技术的精度和复杂性之间的权衡,从而减小了模型的尺寸和计算量。文献表明,这些技术本身工作得很好,在这项研究中被证明,结合起来,它实现了更好的权衡。我们提出了KutralNext架构,这是一个有效的模型,减少了单标签和多标签火灾和烟雾识别任务的层数和计算资源。此外,采用新技术改进的更高效的KutralNext+模型在FireNet、FiSmo和FiSmoA火灾数据集中实现了84.36%的平均测试精度。对于KutralSmoke和FiSmo火灾和烟雾数据集,平均测试精度达到81.53%。此外,考虑到最先进的火灾和烟雾识别模型FireDetection, KutralNext使用的参数减少了59%,而KutralNext+需要的失败次数减少了97%,速度提高了4倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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