2017
Journal article  Open Access

Deep Learning in Automotive Software

Falcini F., Lami G., Mitidieri A. C.

software development  computing methodologies  software engineering process  neural networks  ISO 26262  ANNs  W model  artificial intelligence  standards  artificial neural networks  vision and scene understanding  computer vision  V model  software engineering  Software  Automotive SPICE  ISO/AWI PAS 21448  deep neural networks 

Deep-learning-based systems are becoming pervasive in automotive software. So, in the automotive software engineering community, the awareness of the need to integrate deep-learning-based development with traditional development approaches is growing, at the technical, methodological, and cultural levels. In particular, data-intensive deep neural network (DNN) training, using ad hoc training data, is pivotal in the development of software for vehicle functions that rely on deep learning. Researchers have devised a development lifecycle for deep-learning-based development and are participating in an initiative, based on Automotive SPICE (Software Process Improvement and Capability Determination), that's promoting the effective adoption of DNN in automotive software. This article is part of a theme issue on Automotive Software.

Source: IEEE software 34 (2017): 56–63. doi:10.1109/MS.2017.79

Publisher: IEEE Computer Society,, [Los Alamitos, CA , Stati Uniti d'America


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BibTeX entry
@article{oai:it.cnr:prodotti:377881,
	title = {Deep Learning in Automotive Software},
	author = {Falcini F. and Lami G. and Mitidieri A. C.},
	publisher = {IEEE Computer Society,, [Los Alamitos, CA , Stati Uniti d'America},
	doi = {10.1109/ms.2017.79},
	journal = {IEEE software},
	volume = {34},
	pages = {56–63},
	year = {2017}
}