Volterra neural networks (vnns)


연구 분야: Artificial Intelligence



학회: The Journal of Machine Learning Research, Volume 25, Issue 1


초록

The importance of inference in Machine Learning (ML) has led to an explosive number of different proposals, particularly in Deep Learning. In an attempt to reduce the complexity of Convolutional Neural Networks, we propose a Volterra filter-inspired Network architecture. This architecture introduces controlled non-linearities in the form of interactions between the delayed input samples of data. We propose a cascaded implementation of Volterra Filtering so as to significantly reduce the number of parameters required to carry out the same classification task as that of a conventional Neural Network. We demonstrate an efficient parallel implementation of this Volterra Neural Network (VNN), along with its remarkable performance while retaining a relatively simpler and potentially more tractable structure. Furthermore, we show a rather sophisticated adaptation of this network to nonlinearly fuse the RGB (spatial) information and the Optical Flow (temporal) information of a video sequence for action recognition. The proposed approach is evaluated on UCF-101 and HMDB-51 datasets for action recognition, and is shown to outperform state of the art CNN approaches. The code-base for our paper is available on github ( https://github.com/sidroheda/Volterra-Neural-Networks).


Author Profile
Siddharth Roheda

Electrical and Computer Engineering Department North Carolina State University Raleigh NC

Andorra
Author Profile
Hamid Krim

Electrical and Computer Engineering Department North Carolina State University Raleigh NC

Andorra
Author Profile
Bo Jiang

Electrical and Computer Engineering Department North Carolina State University Raleigh NC

Andorra

📄 논문 정보

발행 연도 2024년
인용수 0
출판 국가 Andorra
사이트 ACM
좋아요 수 0

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