A 915–1220 TOPS/W Hybrid In-Memory Computing based Image Restoration and Region Proposal Integrated Circuit for Neuromorphic Vision Sensors in 65nm CMOS

Xueyong Zhang, A. Basu
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引用次数: 1

Abstract

The bio-inspired asynchronous event-based neuromorphic vision sensors (NVS) are introducing a paradigm shift in visual information sensing and processing [1]. The feature of event-driven operation makes it ideal for low-power operation in the Internet-of-Things scenario such as traffic monitoring. However, the inherent noise in the sensor causes redundant wake-up operation and reduces tracking performance [2]. Energy efficient in-memory computing (IMC) based denoise operation allows blank-frame detection to gain 2X energy savings. Further energy savings can be obtained by exploiting spatial redundancy-objects usually occupy a small part ~5% of the frame in traffic monitoring [3]. Hence, region proposal (RP) is required to detect the region of interests (ROIs) in a valid frame along with their bounding box location coordinates, as shown in Fig. 1. For binary images, the conventional connected component labeling (CCL) algorithm [4] can propose ROIs by raster scanning the whole frame, but leads to longer search time and higher computing energy due to von Neumann operation. The promising IMC approach [3] has high energy efficiency, but has limited accuracy due to a simple algorithm constrained by in-memory operations as well as object fragmentation due to smooth surfaces (e.g. car windows) that do not generate events. In this work, we present a hybrid memory bit cell-collocated SRAM and DRAM (CRAM) consisting of 11 transistors for IMC-based image restoration (IR) and RP. The proposed CRAM supports image storage in SRAM and DRAM modes, denoise and region filling in diffusion mode and RP algorithm in projection mode.
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基于915-1220 TOPS/W混合内存计算的神经形态视觉传感器图像恢复与区域建议集成电路
生物启发的异步事件神经形态视觉传感器(NVS)正在引入视觉信息感知和处理的范式转变[1]。事件驱动的运行特性使其非常适合交通监控等物联网场景下的低功耗运行。然而,传感器固有的噪声会导致冗余唤醒操作,降低跟踪性能[2]。节能内存计算(IMC)为基础的降噪操作,使空白帧检测获得2倍的节能。利用空间冗余可以进一步节省能量——在交通监控中,目标通常只占帧的一小部分~5%[3]。因此,需要区域建议(RP)来检测有效帧中的兴趣区域(roi)及其边界框位置坐标,如图1所示。对于二值图像,传统的连通分量标记(CCL)算法[4]可以通过栅格扫描整个帧来提出roi,但由于采用von Neumann运算,搜索时间较长,计算能量较高。有前途的IMC方法[3]具有高能效,但由于简单的算法受到内存操作的限制以及由于光滑表面(例如车窗)不产生事件而导致的对象碎片,因此精度有限。在这项工作中,我们提出了一个由11个晶体管组成的混合存储位单元并置的SRAM和DRAM (CRAM),用于基于imc的图像恢复(IR)和RP。该算法支持SRAM和DRAM模式下的图像存储,扩散模式下的去噪和区域填充,投影模式下的RP算法。
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