Rajat Bhattacharjya, Arnab Sarkar, Biswadip Maity, Nikil Dutt
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引用次数: 0
摘要
多重信号分类(MUSIC)是一种广泛使用的到达方向(DoA)/到达角度(AoA)估计算法,应用于自动驾驶、医疗成像和天文学等多个领域。我们提出了 MUSIC-lite,它利用近似计算生成一个设计空间,探索精度、面积和功耗之间的权衡。这特别适用于正交半频分复用(OFDM)雷达应用案例中 MUSIC 算法中计算密集的奇异值分解(SVD)部分。MUSIC-lite 将近似加法器纳入了用于 MUSIC 硬件实现的迭代 CORDIC 算法,从而实现了有趣的精度-面积-功耗权衡。我们的实验证明,对于高效的 MUSIC 实现,MUSIC-lite 能够平均节省 17.25% 的芯片面积和 19.4% 的功耗,误差最小为 0.14%。
MUSIC-lite: Efficient MUSIC using Approximate Computing: An OFDM Radar Case Study
Multiple Signal Classification (MUSIC) is a widely used Direction of Arrival
(DoA)/Angle of Arrival (AoA) estimation algorithm applied to various
application domains such as autonomous driving, medical imaging, and astronomy.
However, MUSIC is computationally expensive and challenging to implement in
low-power hardware, requiring exploration of trade-offs between accuracy, cost,
and power. We present MUSIC-lite, which exploits approximate computing to
generate a design space exploring accuracy-area-power trade-offs. This is
specifically applied to the computationally intensive singular value
decomposition (SVD) component of the MUSIC algorithm in an orthogonal
frequency-division multiplexing (OFDM) radar use case. MUSIC-lite incorporates
approximate adders into the iterative CORDIC algorithm that is used for
hardware implementation of MUSIC, generating interesting accuracy-area-power
trade-offs. Our experiments demonstrate MUSIC-lite's ability to save an average
of 17.25% on-chip area and 19.4% power with a minimal 0.14% error for efficient
MUSIC implementations.