AdaRadar: Rate Adaptive Spectral Compression for Radar-based Perception
Jinho Park, Se Young Chun, Mingoo Seok

TL;DR
This paper introduces AdaRadar, an adaptive spectral compression method for radar data in autonomous driving, significantly reducing data size with minimal impact on detection performance.
Contribution
It presents a novel online adaptive compression scheme using gradient-based feedback and spectral pruning, tailored for radar data in autonomous systems.
Findings
Achieves over 100x data size reduction with ~1% performance drop.
Employs gradient descent with zeroth-order approximation for adaptive compression.
Validates effectiveness on multiple radar datasets.
Abstract
Radar is a critical perception modality in autonomous driving systems due to its all-weather characteristics and ability to measure range and Doppler velocity. However, the sheer volume of high-dimensional raw radar data saturates the communication link to the computing engine (e.g., an NPU), which is often a low-bandwidth interface with data rate provisioned only for a few low-resolution range-Doppler frames. A generalized codec for utilizing high-dimensional radar data is notably absent, while existing image-domain approaches are unsuitable, as they typically operate at fixed compression ratios and fail to adapt to varying or adversarial conditions. In light of this, we propose radar data compression with adaptive feedback. It dynamically adjusts the compression ratio by performing gradient descent from the proxy gradient of detection confidence with respect to the compression rate.…
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