DFTerNet: Towards 2-bit Dynamic Fusion Networks for Accurate Human Activity Recognition
Zhan Yang, Osolo Ian Raymond, ChengYuan Zhang, Ying Wan, Jun Long

TL;DR
This paper introduces DFTerNet, a 2-bit neural network model optimized for human activity recognition that balances accuracy and efficiency, enabling deployment on portable devices with resource constraints.
Contribution
The paper proposes a novel 2-bit CNN with dynamic fusion strategies for sensor data, improving activity recognition accuracy and efficiency on portable devices.
Findings
Achieved up to 5% accuracy improvement over baseline models.
Close performance to full-precision models with 2-bit quantization.
Realized ~9x CPU acceleration and ~11x memory savings.
Abstract
Deep Convolutional Neural Networks (DCNNs) are currently popular in human activity recognition applications. However, in the face of modern artificial intelligence sensor-based games, many research achievements cannot be practically applied on portable devices. DCNNs are typically resource-intensive and too large to be deployed on portable devices, thus this limits the practical application of complex activity detection. In addition, since portable devices do not possess high-performance Graphic Processing Units (GPUs), there is hardly any improvement in Action Game (ACT) experience. Besides, in order to deal with multi-sensor collaboration, all previous human activity recognition models typically treated the representations from different sensor signal sources equally. However, distinct types of activities should adopt different fusion strategies. In this paper, a novel scheme is…
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