The safety of automated vehicles (AVs) relies on the representation of their environment. Consequently, state-of-the-art AVs employ potent sensor systems to achieve the best possible environment representation at all times. Although these high-performing systems achieve impressive results, they induce significant requirements for the processing capabilities of an AV's computational hardware components and their energy consumption. To enable a dynamic adaptation of such perception systems based on the situational perception requirements, we introduce a model-agnostic method for the scalable employment of single-frame object detection models using frame-dropping in tracking-by-detection systems. We evaluate our approach on the KITTI 3D Tracking Benchmark, showing that significant energy savings can be achieved at acceptable performance degradation, reaching up to 28% reduction of energy consumption at a performance decline of 6.6% in HOTA score.
翻译:自动驾驶车辆(AV)的安全性依赖于其对环境的描述,因此,最先进的AV采用强大的传感器系统,以在任何时候实现最佳的环境表示。虽然这些高性能系统取得了令人印象深刻的成果,但它们对AV的计算硬件组件的处理能力和能耗产生了重大的要求。为了实现基于情况感知要求的这种感知系统的动态适应性,我们引入了一种可伸缩地使用单帧物体检测模型在跟踪-检测系统中丢帧的模型无关方法。我们在KITTI 3D跟踪基准上评估了我们的方法,表明可以在性能降低6.6%的情况下实现显著的节能效果,最高可达28%的节能。