Video based Traffic Forecasting using Convolution Neural Network Model and Transfer Learning Techniques
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How to Cite

Kumar, T. Senthil. 2020. “Video Based Traffic Forecasting Using Convolution Neural Network Model and Transfer Learning Techniques”. Journal of Innovative Image Processing 2 (3): 128-34. https://doi.org/10.36548/jiip.2020.3.002.

Keywords

  • network-wide forecasts
  • spatial filtering
  • convolutional neural networks
  • spatiotemporal models
  • urban traffic flow

Abstract

The ideas, algorithms and models developed for application in one particular domain can be applied for solving similar issues in a different domain using the modern concept termed as transfer learning. The connection between spatiotemporal forecasting of traffic and video prediction is identified in this paper. With the developments in technology, traffic signals are replaced with smart systems and video streaming for analysis and maintenance of the traffic all over the city. Processing of these video streams requires lot of effort due to the amount of data that is generated. This paper proposed a simplified technique for processing such voluminous data. The large data set of real-world traffic is used for prediction and forecasting the urban traffic. A combination of predefined kernels are used for spatial filtering and several such transferred techniques in combination will convolutional artificial neural networks that use spectral graphs and time series models. Spatially regularized vector autoregression models and non-spatial time series models are the baseline traffic forecasting models that are compared for forecasting the performance. In terms of training efforts, development as well as forecasting accuracy, the efficiency of urban traffic forecasting is high on implementation of video prediction algorithms and models. Further, the potential research directions are presented along the obstacles and problems in transferring schemes.

References

Kaya, H., Gürpınar, F., & Salah, A. A. (2017). Video-based emotion recognition in the wild using deep transfer learning and score fusion. Image and Vision Computing, 65, 66-75.

Molchanov, P., Tyree, S., Karras, T., Aila, T., & Kautz, J. (2016). Pruning convolutional neural networks for resource efficient transfer learning. arXiv preprint arXiv:1611.06440, 3.

Lu, J., Behbood, V., Hao, P., Zuo, H., Xue, S., & Zhang, G. (2015). Transfer learning using computational intelligence: A survey. Knowledge-Based Systems, 80, 14-23.

Chaabouni, S., Benois-Pineau, J., & Amar, C. B. (2016, September). Transfer learning with deep networks for saliency prediction in natural video. In 2016 IEEE International Conference on Image Processing (ICIP) (pp. 1604-1608). IEEE.

Jayashree, S. and D. A. Janeera. “Real-Time Fire Detection, Alerting and Suppression System using Live Video Surveillance.” (2016).

Lucena, O., Junior, A., Moia, V., Souza, R., Valle, E., & Lotufo, R. (2017, July). Transfer learning using convolutional neural networks for face anti-spoofing. In International Conference Image Analysis and Recognition (pp. 27-34). Springer, Cham.

Ruth Anita Shirley D, Ranjani K, Gokulalakshmi Arunachalam, Janeera D.A., "Distributed Gardening System Using Object Recognition and Visual Servoing" In International Conference on Inventive Communication and Computational Technologies[ICICCT 2020], Springer, India, 2020.

Diba, A., Fayyaz, M., Sharma, V., Karami, A. H., Arzani, M. M., Yousefzadeh, R., & Van Gool, L. (2017). Temporal 3d convnets: New architecture and transfer learning for video classification. arXiv preprint arXiv:1711.08200.

Sabokrou, M., Fayyaz, M., Fathy, M., Moayed, Z., & Klette, R. (2018). Deep-anomaly: Fully convolutional neural network for fast anomaly detection in crowded scenes. Computer Vision and Image Understanding, 172, 88-97.

Su, Y. C., Chiu, T. H., Yeh, C. Y., Huang, H. F., & Hsu, W. H. (2014). Transfer learning for video recognition with scarce training data for deep convolutional neural network. arXiv preprint arXiv:1409.4127.

D. A. Janeera and Sasipriya.S. "A Brain Computer Interface Based Patient Observation and Indoor Locating System with Capsule Network Algorithm" In International Conference on Image Processing and Capsule Networks (ICIPCN 2020), Springer, Thailand, 2020.

Qian, Y., Dong, J., Wang, W., & Tan, T. (2016, September). Learning and transferring representations for image steganalysis using convolutional neural network. In 2016 IEEE international conference on image processing (ICIP) (pp. 2752-2756). IEEE.

Kumar, T. S. (2019). A Novel Method for HDR Video Encoding, Compression and Quality Evaluation. Journal of Innovative Image Processing (JIIP), 1(02), 71-80.

Manoharan, S. (2019). A Smart Image Processing Algorithm for Text Recognition Information Extraction and Vocalization for the Visually Challenged. Journal of Innovative Image Processing (JIIP), 1(01), 31-38.

Shakya, S. (2019). Machine Learning Based Nonlinearity Determination for Optical Fiber Communication-Review. Journal of Ubiquitous Computing and Communication Technologies (UCCT), 1(02), 121-127.