An Automotive Case Study on the Limits of Approximation for Object Detection

Autor: Caro, Martí, Tabani, Hamid, Abella, Jaume, Moll, Francesc, Morancho, Enric, Canal, Ramon, Altet, Josep, Calomarde, Antonio, Cazorla, Francisco J., Rubio, Antonio, Fontova, Pau, Fornt, Jordi
Rok vydání: 2023
Předmět:
Zdroj: Journal of Systems Architecture, Volume 138, 2023, 102872, ISSN 1383-7621
Druh dokumentu: Working Paper
DOI: 10.1016/j.sysarc.2023.102872
Popis: The accuracy of camera-based object detection (CBOD) built upon deep learning is often evaluated against the real objects in frames only. However, such simplistic evaluation ignores the fact that many unimportant objects are small, distant, or background, and hence, their misdetections have less impact than those for closer, larger, and foreground objects in domains such as autonomous driving. Moreover, sporadic misdetections are irrelevant since confidence on detections is typically averaged across consecutive frames, and detection devices (e.g. cameras, LiDARs) are often redundant, thus providing fault tolerance. This paper exploits such intrinsic fault tolerance of the CBOD process, and assesses in an automotive case study to what extent CBOD can tolerate approximation coming from multiple sources such as lower precision arithmetic, approximate arithmetic units, and even random faults due to, for instance, low voltage operation. We show that the accuracy impact of those sources of approximation is within 1% of the baseline even when considering the three approximate domains simultaneously, and hence, multiple sources of approximation can be exploited to build highly efficient accelerators for CBOD in cars.
Databáze: arXiv