Deep convolutional generative adversarial networks for flame detection in video

Date

2020

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Source Title

Computational Collective Intelligence: 12th International Conference, ICCCI 2020

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Springer, Cham

Volume

12496 LNAI

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Pages

807 - 815

Language

English

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Lecture Notes in Computer Science;LNCS 12496

Abstract

Real-time flame detection is crucial in video-based surveillance systems. We propose a vision-based method to detect flames using Deep Convolutional Generative Adversarial Neural Networks (DCGANs). Many existing supervised learning approaches using convolutional neural networks do not take temporal information into account and require a substantial amount of labeled data. To have a robust representation of sequences with and without flame, we propose a two-stage training of a DCGAN exploiting spatio-temporal flame evolution. Our training framework includes the regular training of a DCGAN with real spatio-temporal images, namely, temporal slice images, and noise vectors, and training the discriminator separately using the temporal flame images without the generator. Experimental results show that the proposed method effectively detects flame in video with negligible false-positive rates in real-time.

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