This article defines new methods for unsupervised fire region segmentation and fire threat detection from video stream. Fire in control serves a number of purposes to human civilization, but it could simultaneously be a threat once its spread becomes uncontrolled. There exists many methods on fire region segmentation and fire non-fire classification. But the approaches to determine the threat associated with fire is relatively scare, and no such unsupervised method has been formulated yet. Here we focus on developing an unsupervised method with which the threat of fire can be quantified and accordingly generate an alarm in automated surveillance systems in indoor as well as in outdoors. Fire region segmentation without any manual intervention/ labelled data set is a major challenge while formulating such a method. Here we have used rough approximations to approximate the fire region, and to manage the incompleteness of the knowledge base, due to absence of any prior information. Utility maximization of Q-learning has been used to minimize ambiguities in the rough approximations. The new set approximation method, thus developed here, is named as Q-rough set. It is used for fire region segmentation from video frames. The threat index of fire flame over the input video stream has been defined in sync with the relative growth in the fire segments on the recent frames. All theories and indices defined here have been experimentally validated with different types of fire videos, through demonstrations and comparisons, as superior to the state of the art.
翻译:本条界定了未经监督的火灾区域分割和视频流火灾威胁探测的新方法。 控制火灾对人类文明具有若干目的, 但一旦其传播受到控制, 火灾区域分割可能同时是一种威胁。 存在许多关于火灾区域分割和火灾非火灾分类的方法。 但确定与火灾相关的威胁的方法相对而言是吓人, 尚未制定这种未经监督的方法。 这里我们的重点是开发一种不受监督的方法, 以量化火灾威胁, 从而在室内和室外自动监视系统中产生警报。 没有人工干预/ 标签数据集的火灾区域分割在制订这种方法时是一个重大挑战。 我们在这里使用粗略的近似来接近火灾区域, 并管理知识库的不完整性, 原因是缺乏任何先前的信息。 优化Q学习的效用已被用于尽量减少粗近似中的模糊性。 因此, 这里开发的新设置近似方法被命名为Q- 。 用于火灾区域分割的视频框中, 使用火灾区域分割是一个主要的挑战。 这里定义的火源威胁指数索引是最近通过实验性指数的对比, 通过不同的实验性指数, 已经定义的火势变校准了 。