CVApr 16, 2024

MobileNetV4 -- Universal Models for the Mobile Ecosystem

arXiv:2404.10518v2556 citationsh-index: 18ECCV
Originality Incremental advance
AI Analysis

This provides universally efficient models for mobile ecosystems, though it appears incremental as an evolution of the MobileNet series.

The authors tackled the problem of creating efficient neural network architectures for mobile devices by introducing MobileNetV4, which achieves 87% ImageNet-1K accuracy with a 3.8ms runtime on a Pixel 8 EdgeTPU.

We present the latest generation of MobileNets, known as MobileNetV4 (MNv4), featuring universally efficient architecture designs for mobile devices. At its core, we introduce the Universal Inverted Bottleneck (UIB) search block, a unified and flexible structure that merges Inverted Bottleneck (IB), ConvNext, Feed Forward Network (FFN), and a novel Extra Depthwise (ExtraDW) variant. Alongside UIB, we present Mobile MQA, an attention block tailored for mobile accelerators, delivering a significant 39% speedup. An optimized neural architecture search (NAS) recipe is also introduced which improves MNv4 search effectiveness. The integration of UIB, Mobile MQA and the refined NAS recipe results in a new suite of MNv4 models that are mostly Pareto optimal across mobile CPUs, DSPs, GPUs, as well as specialized accelerators like Apple Neural Engine and Google Pixel EdgeTPU - a characteristic not found in any other models tested. Finally, to further boost accuracy, we introduce a novel distillation technique. Enhanced by this technique, our MNv4-Hybrid-Large model delivers 87% ImageNet-1K accuracy, with a Pixel 8 EdgeTPU runtime of just 3.8ms.

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