首页> 外文会议>IEEE International Solid- State Circuits Conference >7.7 A 0.2-to-3.6TOPS/W Programmable Convolutional Imager SoC with In-Sensor Current-Domain Ternary-Weighted MAC Operations for Feature Extraction and Region-of-Interest Detection
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7.7 A 0.2-to-3.6TOPS/W Programmable Convolutional Imager SoC with In-Sensor Current-Domain Ternary-Weighted MAC Operations for Feature Extraction and Region-of-Interest Detection

机译:7.7一个0.2至3.6TOP / W可编程卷积成像成像器SOC,具有传感器电流域三元加权MAC操作,用于特征提取和兴趣区域的检测

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Mixed-signal vision chips are becoming increasingly popular for low-power embedded computer vision applications on smartphones, wearables and IoT nodes, as they meet stringent power and area constraints while maintaining a sufficient level of accuracy for low- to medium-level image processing tasks. On the one hand, in-sensor processing [1, 2] enables massively parallel operation but relies on pixel-level processing elements that degrade the pixel pitch and restrict the convolutional receptive field to neighboring pixels [1], precluding multi-scale operation. On the other hand, near-sensor processing [3–5] can operate at multiple scales by pixel downsampling [3] or binning [4] but entails significant power and area overhead as an analog memory is required to store pixel values awaiting processing. In addition, previous near-sensor processing SoCs are generally application-specific and thus suffer from limited versatility. In this paper, we present a 65nm QQVGA convolutional imager SoC codenamed SleepSpotter capable of versatile feature extraction and region-of-interest (RoI) detection based on in-sensor current-domain MAC operations. It operates at 6 different scales, features programmable filter size (F), stride (S), and ternary filter weights (1.5b). It reaches a minimum energy of 2.5pJ/pixel•frame•filter and a peak efficiency of 3.6TOPS/W, with 29% pixel area overhead for enabling the convolution and without the need for an analog memory.
机译:混合信号视觉芯片正越来越受到智能手机,可穿戴设备和IOT节点的低功耗嵌入式计算机视觉应用的流行,因为它们会符合严格的电源和区域约束,同时保持足够的精度为低至中级图像处理任务。一方面,传感器处理[1,2]使得能够大致平行操作,但依赖于降低像素间距的像素级处理元件,并将卷积接收区域限制到相邻像素[1],排除多尺度操作。另一方面,近传感器处理[3-5]可以通过像素下采样[3]或分布[4],但是需要在等待处理的像素值时需要显着的功率和面积开销。另外,先前的近传感器处理SoC通常是特定于应用的,因此具有有限的多功能性。在本文中,我们展示了一种能够基于传感器电流域MAC操作的多功能特征提取和兴趣区域检测的65nm QQVGA卷积器SoC代号为睡眠者。它以6个不同的尺度运行,具有可编程滤波器大小(f),步幅和三元滤波器权重(1.5b)。它达到2.5pj / pixel•框架的最小能量•滤波器和3.6tops / w的峰值效率,具有29%像素区域开销,用于启用卷积,无需模拟内存。

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