Proceedings of the 61st ACM/IEEE Design Automation Conference 2024
DOI: 10.1145/3649329.3657310
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LOTUS: learning-based online thermal and latency variation management for two-stage detectors on edge devices

Yifan Gong,
Yushu Wu,
Zheng Zhan
et al.

Abstract: Two-stage object detectors exhibit high accuracy and precise localization, especially for identifying small objects that are favorable for various edge applications. However, the high computation costs associated with two-stage detection methods cause more severe thermal issues on edge devices, incurring dynamic runtime frequency change and thus large inference latency variations. Furthermore, the dynamic number of proposals in different frames leads to various computations over time, resulting in further late… Show more

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