Fig. 1 Configuration of the Fire Detection System using CNN and Grad-CAM
Fig. 2 Learning Curve Graph(accuracy, loss) for Training/Validation
Fig. 3 Visualization of Flame/Smoke using Grad-CAM
Fig. 4 Analysis for False Positive/Negative samples
Table. 1 Multi-labeled Dataset
Table. 2 Results of Validation and Test for Inception V3, Xception and Inception ResNet V2
Table. 3 Analysis of the test result
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