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Video Smoke Detection Method Based on Change-Cumulative Image and Fusion Deep Network

机译:基于累积变化图像和融合深度网络的视频烟雾检测方法

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摘要

Smoke detection technology based on computer vision is a popular research direction in fire detection. This technology is widely used in outdoor fire detection fields (e.g., forest fire detection). Smoke detection is often based on features such as color, shape, texture, and motion to distinguish between smoke and non-smoke objects. However, the salience and robustness of these features are insufficiently strong, resulting in low smoke detection performance under complex environment. Deep learning technology has improved smoke detection performance to a certain degree, but extracting smoke detail features is difficult when the number of network layers is small. With no effective use of smoke motion characteristics, indicators such as false alarm rate are high in video smoke detection. To enhance the detection performance of smoke objects in videos, this paper proposes a concept of change-cumulative image by converting the YUV color space of multi-frame video images into a change-cumulative image, which can represent the motion and color-change characteristics of smoke. Then, a fusion deep network is designed, which increases the depth of the VGG16 network by arranging two convolutional layers after each of its convolutional layer. The VGG16 and Resnet50 (Deep residual network) network models are also arranged using the fusion deep network to improve feature expression ability while increasing the depth of the whole network. Doing so can help extract additional discriminating characteristics of smoke. Experimental results show that by using the change-cumulative image as the input image of the deep network model, smoke detection performance is superior to the classic RGB input image; the smoke detection performance of the fusion deep network model is better than that of the single VGG16 and Resnet50 network models; the smoke detection accuracy, false positive rate, and false alarm rate of this method are better than those of the current popular methods of video smoke detection.
机译:基于计算机视觉的烟雾探测技术是火灾探测领域的流行研究方向。该技术广泛用于室外火灾探测领域(例如,森林火灾探测)。烟雾检测通常基于颜色,形状,纹理和运动等特征,以区分烟雾和非烟雾物体。但是,这些功能的显着性和鲁棒性不够强,导致复杂环境下的烟雾探测性能低下。深度学习技术在一定程度上提高了烟雾检测性能,但是当网络层数较少时,很难提取烟雾细节特征。在没有有效利用烟雾运动特性的情况下,视频烟雾检测中的误报率等指标很高。为了提高视频中烟雾物体的检测性能,提出了一种将多帧视频图像的YUV色彩空间转换为可表示运动和颜色变化特征的累积颜色图像的概念烟。然后,设计了融合深度网络,该融合深度网络通过在每个卷积层之后安排两个卷积层来增加VGG16网络的深度。还使用融合深度网络安排了VGG16和Resnet50(深度残留网络)网络模型,以提高特征表达能力,同时增加整个网络的深度。这样做可以帮助提取烟雾的其他区别特征。实验结果表明,通过将累积变化图像用作深度网络模型的输入图像,烟雾检测性能优于传统的RGB输入图像。融合深度网络模型的烟雾检测性能优于单个VGG16和Resnet50网络模型。该方法的烟雾检测精度,误报率和误报率均优于目前流行的视频烟雾检测方法。

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