Resource-Constrained Machine Learning for ADAS: A Systematic Review

被引:31
|
作者
Borrego-Carazo, Juan [1 ,2 ]
Castells-Rufas, David [2 ]
Biempica, Ernesto [1 ]
Carrabina, Jordi [2 ]
机构
[1] Kostal Elect SA, RD, Barcelona 08181, Spain
[2] Univ Autonoma Barcelona, Microelect & Elect Syst Dept, Cerdanyola Del Valles 08193, Spain
关键词
Machine learning; Task analysis; Automotive engineering; Hardware; Systematics; Computational modeling; Adaptation models; embedded software; automotive engineering; GPU; FPGA; ADAS; SUPPORT VECTOR MACHINE; RECOGNITION; SEARCH;
D O I
10.1109/ACCESS.2020.2976513
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The advent of machine learning (ML) methods for the industry has opened new possibilities in the automotive domain, especially for Advanced Driver Assistance Systems (ADAS). These methods mainly focus on specific problems ranging from traffic sign and light recognition to pedestrian detection. In most cases, the computational resources and power budget found in ADAS systems are constrained while most machine learning methods are computationally intensive. The usual solution consists in adapting the ML models to comply with the memory and real-time (RT) requirements for inference. Some models are easily adapted to resource-constrained hardware, such as Support Vector Machines, while others, like Neural Networks, need more complex processes to fit into the desired hardware. The ADAS hardware (HW platforms) are diverse, from complex MPSoC CPUs down to classical MCUs, DPSs and application-specific FPGAs and ASICs or specific GPU platforms (such as the NVIDIA families Tegra or Jetson). Therefore, there is a tradeoff between the complexity of the ML model implemented and the selected platform that impacts the performance metrics: function results, energy consumption and speed (latency and throughput). In this paper, a survey in the form of systematic review is conducted to analyze the scope of the published research works that embed ML models into resource-constrained implementations for ADAS applications and what are the achievements regarding the ML performance, energy and speed trade-off.
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页码:40573 / 40598
页数:26
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