论文标题

量化雷达干扰的神经网络

Quantized Neural Networks for Radar Interference Mitigation

论文作者

Rock, Johanna, Roth, Wolfgang, Meissner, Paul, Pernkopf, Franz

论文摘要

雷达传感器对于对驾驶员援助系统以及自动驾驶汽车的环境感知至关重要。关键性能因素是天气抵抗力和直接测量速度的可能性。随着雷达传感器数量的增加和到目前为止不受管制的汽车雷达频带,相互干扰是不可避免的,必须处理。需要在早期处理阶段上在雷达数据上运行的算法和模型才能直接在专用硬件(即雷达传感器)上运行。该专业硬件通常具有严格的资源构成,即记忆力低和计算能力低。基于卷积神经网络(CNN)的方法,用于降级和干扰缓解的方法在性能方面产生了雷达处理的有希望的结果。但是,这些模型通常包含数百万个参数,存储在数百兆字节中,并且在执行过程中需要额外的内存。在本文中,我们研究了基于CNN的降解和干扰雷达信号的量化技术。我们通过考虑(i)量化权重和(ii)分段恒定激活函数来分析不同基于CNN的模型架构和大小的量化潜力,从而分别减少了模型存储和推理步骤中的内存需求。

Radar sensors are crucial for environment perception of driver assistance systems as well as autonomous vehicles. Key performance factors are weather resistance and the possibility to directly measure velocity. With a rising number of radar sensors and the so far unregulated automotive radar frequency band, mutual interference is inevitable and must be dealt with. Algorithms and models operating on radar data in early processing stages are required to run directly on specialized hardware, i.e. the radar sensor. This specialized hardware typically has strict resource-constraints, i.e. a low memory capacity and low computational power. Convolutional Neural Network (CNN)-based approaches for denoising and interference mitigation yield promising results for radar processing in terms of performance. However, these models typically contain millions of parameters, stored in hundreds of megabytes of memory, and require additional memory during execution. In this paper we investigate quantization techniques for CNN-based denoising and interference mitigation of radar signals. We analyze the quantization potential of different CNN-based model architectures and sizes by considering (i) quantized weights and (ii) piecewise constant activation functions, which results in reduced memory requirements for model storage and during the inference step respectively.

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