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NeuroSensor: A 3D image sensor with integrated neural accelerator

机译:NeuroSensor:具有集成神经加速器的3D图像传感器

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3D integration provides opportunities to design high-bandwidth and low-power CMOS image sensors (CIS) [1-4]. The 3D stacking of pixel tier, peripheral tier, memory tier(s), and compute tier(s) enables high degree of parallel processing. Also, each tier can be designed in different technology nodes (heterogeneous integration) to further improve power-efficiency. This paper presents a case study of a smart 3D image sensor with integrated neuro-inspired computing for intelligent vision processing. Hardware acceleration of neuro-inspired computing has received much attention in recent years for recognition and classification [5]. We present the physical design of NeuroSensor, a 3D CIS with an integrated convolutional neural network (CNN) accelerator. The rationale for our approach is that 3D integration of sensor, memory, and computing will effectively harness the inherent parallelism in neural algorithms. We design the NeuroSensor considering different complexities of CNN platform, ranging from only feature extraction to complete classification, and study the trade-offs between complexity, performance, and power.
机译:3D集成为设计高带宽和低功耗CMOS图像传感器(CIS)提供了机会[1-4]。像素层,外围层,存储层和计算层的3D堆栈可实现高度的并行处理。同样,可以在不同的技术节点(异构集成)中设计每个层,以进一步提高功率效率。本文介绍了一个具有集成的神经启发计算的智能3D图像传感器的案例研究,用于智能视觉处理。近年来,神经识别计算的硬件加速在识别和分类方面受到了广泛的关注[5]。我们介绍NeuroSensor的物理设计,这是一个带有集成卷积神经网络(CNN)加速器的3D CIS。我们方法的基本原理是传感器,内存和计算的3D集成将有效利用神经算法中固有的并行性。我们考虑到CNN平台的不同复杂性(从仅特征提取到完整分类)来设计NeuroSensor,并研究复杂性,性能和功能之间的权衡。

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