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A 2.71 nJ/Pixel Gaze-Activated Object Recognition System for Low-Power Mobile Smart Glasses

机译:用于低功率移动智能眼镜的2.71 nJ /像素凝视激活的物体识别系统

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摘要

A low-power object recognition (OR) system with intuitive gaze user interface (UI) is proposed for battery-powered smart glasses. For low-power gaze UI, we propose a low-power single-chip gaze estimation sensor, called gaze image sensor (GIS). In GIS, a novel column-parallel pupil edge detection circuit (PEDC) with new pupil edge detection algorithm XY pupil detection (XY-PD) is proposed which results in power reduction with larger resolution compared to previous work. Also, a logarithmic SIMD processor is proposed for robust pupil center estimation, error, with low-power floating-point implementation. For OR, low-power multicore OR processor (ORP) is implemented. In ORP, task-level pipeline with keypoint-level scoring is proposed to reduce the number of cores as well as the operating frequency of keypoint-matching processor (KMP) for low-power consumption. Also, dual-mode convolutional neural network processor (CNNP) is designed for fast tile selection without external memory accesses. In addition, a pipelined descriptor generation processor (DGP) with LUT-based nonlinear operation is newly proposed for low-power OR. Lastly, dynamic voltage and frequency scaling (DVFS) for dynamic power reduction in ORP is applied. Combining both of the GIS and ORP fabricated in 65 nm CMOS logic process, only 75 mW average power consumption is achieved with real-time OR performance, which is lower power than the previously published work.
机译:针对电池供电的智能眼镜,提出了一种具有直观注视用户界面(UI)的低功耗目标识别(OR)系统。对于低功耗注视UI,我们提出了一种低功耗单芯片注视估计传感器,称为注视图像传感器(GIS)。在GIS中,提出了一种具有新的瞳孔边缘检测算法XY瞳孔检测(XY-PD)的新颖的列平行瞳孔边缘检测电路(PEDC),与以前的工作相比,该方法可以降低功耗,并且分辨率更高。此外,提出了一种对数SIMD处理器,用于通过低功耗浮点实现的鲁棒瞳孔中心估计,误差。对于OR,实现了低功耗多核OR处理器(ORP)。在ORP中,提出了具有关键点级评分的任务级流水线,以减少内核数量以及关键点匹配处理器(KMP)的工作频率,从而降低功耗。同样,双模式卷积神经网络处理器(CNNP)设计用于无需外部存储器访问的快速图块选择。另外,针对低功耗OR,最近提出了具有基于LUT的非线性运算的流水线描述符生成处理器(DGP)。最后,应用动态电压和频率缩放(DVFS)来降低ORP中的动态功耗。结合使用65 nm CMOS逻辑工艺制造的GIS和ORP,实时OR性能仅实现75 mW的平均功耗,这比以前发布的工作功耗要低。

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