5.1 A Stacked Global-Shutter CMOS Imager with SC-Type Hybrid-GS Pixel and Self-Knee Point Calibration Single Frame HDR and On-Chip Binarization Algorithm for Smart Vision Applications

Chen Xu, Y. Mo, Guanjing Ren, Weijian Ma, Xin Wang, Wenjie Shi, Ji-Ling Hou, Ke Shao, Haojie Wang, P. Xiao, Zexu Shao, Xiao Xie, Xiaoyong Wang, C. Yiu
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引用次数: 11

Abstract

Request for smart vision related applications, such as face identification, VR/AR, gesture recognition, 3D imaging, and artificial intelligence (AI), has driven demand for high-performance global-shutter (GS) sensors. Most commercially available GS sensors use a charge-domain storage gate implementation, which suffers from serious light leakage and leads to lower shutter efficiency. This situation worsens when using a BSI fabrication process [1]. In addition, the traditional frame-based or line-based HDR method utilizing multiple exposures adds motion artifact to fast-moving objects, which defeats the purpose of having a global shutter. Moreover, some smart vision applications such as QR 2D barcode scanners and 3D facial recognition with structured light method need image sensors to “read” a certain pattern and “understand” the information within. However, image sensors usually capture a full image that needs to be further transferred to and processed by a companion SoC. Higher resolution and increased complexity of the target pattern pose a growing challenge to transfer and process the entire image at real time, also the required high power consumption lowers handheld device’s battery life.
5.1基于sc型Hybrid-GS像素和自膝点校准单帧HDR和片上二值化算法的堆叠式全局快门CMOS成像仪
对智能视觉相关应用的需求,如面部识别、VR/AR、手势识别、3D成像和人工智能(AI),推动了对高性能全局快门(GS)传感器的需求。市面上的GS传感器大多采用电荷域存储门实现,存在严重的漏光问题,导致快门效率较低。当使用BSI制造工艺时,这种情况会恶化[1]。此外,传统的基于帧或基于线的HDR方法利用多次曝光,给快速运动的物体增加了运动伪影,这违背了具有全局快门的目的。此外,一些智能视觉应用,如QR二维条码扫描仪和3D面部识别与结构光方法需要图像传感器来“读取”一定的模式,并“理解”其中的信息。然而,图像传感器通常捕获完整的图像,需要进一步传输到配套SoC并进行处理。更高的分辨率和目标图案的复杂性对实时传输和处理整个图像提出了越来越大的挑战,同时所需的高功耗也降低了手持设备的电池寿命。
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