Title: Block-based Feature Extraction Model for Early Fire Detection
Authors: Chou, Kuang-Pen
Prasad, Mukesh
Gupta, Deepak
Sankar, Sharmi
Xu, Ting-Wei
Sundaram, Suresh
Lin, Chin-Teng
Lin, Wen-Chieh
資訊工程學系
電控工程研究所
Department of Computer Science
Institute of Electrical and Control Engineering
Keywords: video surveillance;feature extraction;disorder analysis
Issue Date: 1-Jan-2017
Abstract: Every year the fire disaster always causes a lot of casualties and property damage. Many researchers are involved in the study of related disaster prevention. Early warning systems and stable fire can significantly reduce the damage caused by fire. Many existing image-based early warning systems can perform well in a particular field. In this paper, we propose a general framework that can be applied in most realistic environments. The proposed system is based on a block-based feature extraction method, which analyses local information in separate regions leading to a reduction in computing data. Local features of fire block are extracted from the detailed characteristics of fire objects, which include fire color, fire source immobility, and disorder. Each local feature has high detection rate and filter out different false-positive cases. Global analysis with fire texture and non-moving properties are applied to further reduce false alarm rate. The proposed system is composed of algorithms with low computation. Through a series of experiments, it can be observed that Experimental results show that the proposed system has higher detection rate and low false alarm rate under various environment.
URI: http://hdl.handle.net/11536/147212
Journal: 2017 IEEE SYMPOSIUM SERIES ON COMPUTATIONAL INTELLIGENCE (SSCI)
Begin Page: 3540
End Page: 3547
Appears in Collections:Conferences Paper