Real-time Traffic Object Detection for Autonomous Driving
- URL: http://arxiv.org/abs/2402.00128v2
- Date: Thu, 29 Feb 2024 18:58:43 GMT
- Title: Real-time Traffic Object Detection for Autonomous Driving
- Authors: Abdul Hannan Khan, Syed Tahseen Raza Rizvi, Andreas Dengel
- Abstract summary: Modern computer vision techniques tend to prioritize accuracy over efficiency.
Existing object detectors are far from being real-time.
We propose a more suitable alternative that incorporates real-time requirements.
- Score: 5.780326596446099
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: With recent advances in computer vision, it appears that autonomous driving
will be part of modern society sooner rather than later. However, there are
still a significant number of concerns to address. Although modern computer
vision techniques demonstrate superior performance, they tend to prioritize
accuracy over efficiency, which is a crucial aspect of real-time applications.
Large object detection models typically require higher computational power,
which is achieved by using more sophisticated onboard hardware. For autonomous
driving, these requirements translate to increased fuel costs and, ultimately,
a reduction in mileage. Further, despite their computational demands, the
existing object detectors are far from being real-time. In this research, we
assess the robustness of our previously proposed, highly efficient pedestrian
detector LSFM on well-established autonomous driving benchmarks, including
diverse weather conditions and nighttime scenes. Moreover, we extend our LSFM
model for general object detection to achieve real-time object detection in
traffic scenes. We evaluate its performance, low latency, and generalizability
on traffic object detection datasets. Furthermore, we discuss the inadequacy of
the current key performance indicator employed by object detection systems in
the context of autonomous driving and propose a more suitable alternative that
incorporates real-time requirements.
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