首页> 外文期刊>IEEE transactions on circuits and systems . I , Regular papers >Intelligent Network-on-Chip With Online Reinforcement Learning for Portable HD Object Recognition Processor
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Intelligent Network-on-Chip With Online Reinforcement Learning for Portable HD Object Recognition Processor

机译:具有在线强化学习功能的智能片上网络,用于便携式高清物体识别处理器

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摘要

An intelligent Reinforcement Learning (RL) Network-on-Chip (NoC) is proposed as a communication architecture of a heterogeneous many-core processor for portable HD object recognition. The proposed RL NoC automatically learns bandwidth adjustment and resource allocation in the heterogeneous many-core processor without explicit modeling. By regulating the bandwidth and reallocating cores, the throughput performances of feature detection and description are increased by 20.4% and 11.5%, respectively. As a result, the overall execution time of the object recognition is reduced by 38%. The proposed processor with RL NoC is implemented in a 65 nm CMOS process, and it successfully demonstrates the real-time object recognition for a 720 p HD video stream while consuming 235 mW peak power at 200 MHz, 1.2 V.
机译:提出了一种智能强化学习(RL)片上网络(NoC)作为用于便携式HD对象识别的异构多核处理器的通信体系结构。提出的RL NoC无需显式建模即可自动在异构多核处理器中学习带宽调整和资源分配。通过调节带宽和重新分配核心,特征检测和描述的吞吐量性能分别提高了20.4%和11.5%。结果,对象识别的总执行时间减少了38%。带有RL NoC的拟议处理器在65 nm CMOS工艺中实现,它成功地演示了720 p高清视频流的实时目标识别,同时在200 MHz,1.2 V时消耗了235 mW峰值功率。

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