Deep learning for autonomous driving systems: technological innovations, strategic implementations, and business implications - a comprehensive review
Laxmi Kant Sahoo , Vijayakumar Varadarajan
Complex Engineering Systems ›› 2025, Vol. 5 ›› Issue (1) : 2
The rapid advancements in deep learning have significantly transformed the landscape of autonomous driving, with profound technological, strategic, and business implications. Autonomous driving systems, which rely on deep learning to enhance real-time perception, decision-making, and control, are poised to revolutionize transportation by improving safety, efficiency, and mobility. Despite this progress, numerous challenges remain, such as real-time data processing, decision-making under uncertainty, and navigating complex environments. This comprehensive review explores the state-of-the-art deep learning methodologies, including Convolutional Neural Networks (CNNs), Recurrent Neural Networks, Long Short-Term Memory networks, and transformers that are central to autonomous driving tasks such as object detection, scene understanding, and path planning. Additionally, the review examines strategic implementations, focusing on the integration of deep learning into the automotive sector, the scalability of artificial intelligence-driven systems, and their alignment with regulatory and safety standards. Furthermore, the study highlights the business implications of deep learning adoption, including its influence on operational efficiency, competitive dynamics, and workforce requirements. The literature also identifies gaps, particularly in achieving full autonomy (Level 5), improving sensor fusion, and addressing the
Deep learning / autonomous driving / object detection / Advanced Driver Assistance Systems (ADAS) / artificial intelligence in transportation / convolutional neural networks (CNNs)
| [1] |
|
| [2] |
|
| [3] |
|
| [4] |
|
| [5] |
First internationally valid system approval for conditionally automated driving. Mercedes-Benz Group. Available from: https://group.mercedes-benz.com/innovation/product-innovation/autonomous-driving/system-approval-for-conditionally-automated-driving.html. [Last accessed on 12 Feb 2025] |
| [6] |
|
| [7] |
|
| [8] |
|
| [9] |
|
| [10] |
|
| [11] |
|
| [12] |
|
| [13] |
|
| [14] |
|
| [15] |
|
| [16] |
|
| [17] |
|
| [18] |
|
| [19] |
|
| [20] |
|
| [21] |
|
| [22] |
|
| [23] |
|
| [24] |
|
| [25] |
|
| [26] |
|
| [27] |
|
| [28] |
|
| [29] |
|
| [30] |
|
| [31] |
|
| [32] |
|
| [33] |
|
| [34] |
|
| [35] |
|
| [36] |
|
| [37] |
|
| [38] |
|
| [39] |
|
| [40] |
|
| [41] |
|
| [42] |
|
| [43] |
|
| [44] |
|
| [45] |
|
| [46] |
|
| [47] |
|
| [48] |
|
| [49] |
|
| [50] |
|
| [51] |
R-Car-V3H: SoC optimized for automotive application in stereo front cameras | Renesas. 2022. Available from: https://www.renesas.com/us/en/products/automotive-products/automotive-system-chips-socs/r-car-v3h-system-chip-soc-designed-intelligent-camera-deep-learning-capabilities. [Last accessed on 12 Feb 2025] |
| [52] |
|
| [53] |
|
| [54] |
Veiga A, Astakhova LV, Botha A, Herselman M. Defining organisational information security culture-perspectives from academia and industry.Comput Secur2020;92:101713 |
/
| 〈 |
|
〉 |