Feb. 9, 2024, 5:42 a.m. | Koen Vellenga H. Joe Steinhauer Alexander Karlsson G\"oran Falkman Asli Rhodin Ashok Koppisetty

cs.LG updates on arXiv.org arxiv.org

Driver intention recognition studies increasingly rely on deep neural networks. Deep neural networks have achieved top performance for many different tasks, but it is not a common practice to explicitly analyse the complexity and performance of the network's architecture. Therefore, this paper applies neural architecture search to investigate the effects of the deep neural network architecture on a real-world safety critical application with limited computational capabilities. We explore a pre-defined search space for three deep neural network layer types that …

architecture complexity cs.lg cs.ne designing driver effects network networks neural architecture search neural networks paper performance practice recognition search studies tasks

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