1 research outputs found
EfficientNet-eLite: Extremely Lightweight and Efficient CNN Models for Edge Devices by Network Candidate Search
Embedding Convolutional Neural Network (CNN) into edge devices for inference
is a very challenging task because such lightweight hardware is not born to
handle this heavyweight software, which is the common overhead from the modern
state-of-the-art CNN models. In this paper, targeting at reducing the overhead
with trading the accuracy as less as possible, we propose a novel of Network
Candidate Search (NCS), an alternative way to study the trade-off between the
resource usage and the performance through grouping concepts and elimination
tournament. Besides, NCS can also be generalized across any neural network. In
our experiment, we collect candidate CNN models from EfficientNet-B0 to be
scaled down in varied way through width, depth, input resolution and compound
scaling down, applying NCS to research the scaling-down trade-off. Meanwhile, a
family of extremely lightweight EfficientNet is obtained, called
EfficientNet-eLite. For further embracing the CNN edge application with
Application-Specific Integrated Circuit (ASIC), we adjust the architectures of
EfficientNet-eLite to build the more hardware-friendly version,
EfficientNet-HF. Evaluation on ImageNet dataset, both proposed
EfficientNet-eLite and EfficientNet-HF present better parameter usage and
accuracy than the previous start-of-the-art CNNs. Particularly, the smallest
member of EfficientNet-eLite is more lightweight than the best and smallest
existing MnasNet with 1.46x less parameters and 0.56% higher accuracy. Code is
available at https://github.com/Ching-Chen-Wang/EfficientNet-eLit