학술논문

Driver Distraction Recognition Based on Transfer Learning and Feature Fusion
Document Type
Conference
Source
2021 5th International Conference on Communication and Information Systems (ICCIS) Communication and Information Systems (ICCIS), 2021 5th International Conference on. :160-164 Oct, 2021
Subject
Communication, Networking and Broadcast Technologies
Training
Heating systems
Visualization
Fuses
Databases
Transfer learning
Data preprocessing
distracted driver recognition
transfer learning
fusion model
convolutional neural network
Language
Abstract
This research proposes a novel hybrid framework to extract discriminative features for driver distraction recognition. First, the training images are preprocessed to a specific size as input to the InceptionV3, Xception, and MoblieNet models. Second, we fine-tuned the three models by freezing part of the network layer. By visualizing the heat map and feature visualization of every single model, it is concluded that the feature regions associated with different network models are different. Finally, based on the observation of the single models, a deep feature fusion method is designed to fuse the features of the three models. Experimental results on StateFarm database demonstrate that the proposed method attains competitive recognition performance compared with other popular approaches.