Narduzzi, SimonTuretken, EnginThiran, Jean-PhilippeDunbar, L. Andrea2023-03-132023-03-132023-03-132022-01-0110.1109/SDS54800.2022.00008https://infoscience.epfl.ch/handle/20.500.14299/195732WOS:000931805000001Designing Deep Neural Networks (DNNs) running on edge hardware remains a challenge. Standard designs have been adopted by the community to facilitate the deployment of Neural Network models. However, not much emphasis is put on adapting the network topology to fit hardware constraints. In this paper, we adapt one of the most widely used architectures for mobile hardware platforms, MobileNetV2, and study the impact of changing its topology and applying post-training quantization. We discuss the impact of the adaptations and the deployment of the model on an embedded hardware platform for face detection.Computer Science, Information SystemsComputer Science, Interdisciplinary ApplicationsComputer Sciencedeep learningface detectionkendryte k210mobilenetlow powerAdaptation of MobileNetV2 for Face Detection on Ultra-Low Power Platformtext::conference output::conference proceedings::conference paper