ZHANG Chao, FU Xiao-Ning, MO Li. Smoke detection based on multispectral separation[J]. Editorial Office of Optics and Precision Engineering, 2013,21(11): 2798-2802
ZHANG Chao, FU Xiao-Ning, MO Li. Smoke detection based on multispectral separation[J]. Editorial Office of Optics and Precision Engineering, 2013,21(11): 2798-2802 DOI: 10.3788/OPE.20132111.2798.
Smoke detection is very important in early-warning of forest-fire. Because of the limitations of lower anti-interference ability
traditional technology is hard to distinguish fire smoke
water fog
the grass and other false information. Therefore
a new smoke detection method based on multispectral separation is proposed. First
band pass filters in the region of 460~520 nm
540~570 nm
and 580~610 nm were used to seize the principal components in spectra emitted by the things under monitoring. Then
plane of the transform domain was build from these principal components
with simple algebraic judgment on the plane
classification and recognition of the smoke
fog and grass were performed. Finally
with as many as 1000 times Monte Carlo simulation
the three-band spectral analysis method proposed has the maximum separability
and easy operation. The proposed method could overcome the shortcoming which cannot distinguish smoke and water fog in traditional image and video detection methods
it no longer needs complex spectra classification algorithms
has certain practical value in the field of fire monitoring.