两种用于烟雾检测的语义分割数据库的比较

Sébastien Frizzi, M. Bouchouicha, E. Moreau
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引用次数: 1

摘要

研究人员发现,温暖的夏季与世界各地火灾的频率和强度之间存在很强的相关性。由于全球变暖的气候模型告诉我们,在未来几十年里,夏季平均气温将急剧上升,导致野火的增加。计算机视觉是一种很好的工具,可以探测和定位早期火灾,防止火灾迅速蔓延,摧毁澳大利亚或巴西的大片森林地区。烟雾是火灾初期的第一个线索,它可以被摄像机探测到,以警告消防员尽快采取行动。卷积神经网络和语义分割可以通过向消防员提供火灾的位置和规模来实现这一任务。为了有效地训练这种类型的网络架构,我们需要一个由许多图像和相应的掩码组成的数据库。烟雾在形状、纹理、颜色和强度方面的复杂性很难正确分割。图像数据库中烟雾类型的多样性对于在现实环境中推广预测至关重要。许多研究论文提出了新的网络架构来分割可见图像光谱中的烟雾,并在他们的数据库上测试了分割的准确性。数据库,在大多数时间,是不可用的。本文比较了两个烟雾数据库的网络性能,并强调了富图像数据库在质量而不是数量方面的重要性。
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Comparison of two semantic segmentation databases for smoke detection
Researchers have found strong correlation between warm summer and the frequency and intensity of fires around the world. Climate models due to global warming tells us that average summer temperature will increase drastically in the next few decades entailing an increase of wildfire. Computer vision is a good tools to detect and locate an incipient fire and prevent a rapid spread of fire destroying huge forest areas as in Australia or Brazil. Smoke is the first clue of an incipient fire that can be detected by a camera to warn firemen to act as quickly as possible. Convolutional neural networks and semantic segmentation can achieve this task by giving location and scale of the fire to firemen. In order to efficiently train this type of network architectures, we need a database composed of many images and corresponding masks. The complexity of the smoke in terms of shape, texture, color and intensity is difficult to segment properly. The diversity of smoke types in the image database is crucial for generalizing prediction in real-world circumstances. Numerous research papers proposed new network architectures for segmenting smoke in visible images spectrum and tested the accuracy of the segmentation on their database. Database that, for the most of the time, was not available. This article deals with comparison of a network performances on two smoke databases and highlight the importance of a rich images database in terms of quality rather than quantity.
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