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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Neural Sensors: Learning Pixel Exposures for HDR Imaging and Video Compressive Sensing With Programmable Sensors
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Neural Sensors: Learning Pixel Exposures for HDR Imaging and Video Compressive Sensing With Programmable Sensors

机译:神经传感器:使用可编程传感器的HDR成像和视频压缩感测的学习像素曝光

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摘要

Camera sensors rely on global or rolling shutter functions to expose an image. This fixed function approach severely limits the sensors' ability to capture high-dynamic-range (HDR) scenes and resolve high-speed dynamics. Spatially varying pixel exposures have been introduced as a powerful computational photography approach to optically encode irradiance on a sensor and computationally recover additional information of a scene, but existing approaches rely on heuristic coding schemes and bulky spatial light modulators to optically implement these exposure functions. Here, we introduce neural sensors as a methodology to optimize per-pixel shutter functions jointly with a differentiable image processing method, such as a neural network, in an end-to-end fashion. Moreover, we demonstrate how to leverage emerging programmable and re-configurable sensor-processors to implement the optimized exposure functions directly on the sensor. Our system takes specific limitations of the sensor into account to optimize physically feasible optical codes and we evaluate its performance for snapshot HDR and high-speed compressive imaging both in simulation and experimentally with real scenes.
机译:相机传感器依赖于全局或滚动快门功能以暴露图像。该固定功能方法严重限制了传感器捕获高动态(HDR)场景并解决高速动力学的能力。已经引入了空间变化的像素曝光作为强大的计算拍摄方法,以光学编码传感器上的辐照度,并计算地恢复场景的附加信息,但现有方法依赖于启发式编码方案和庞大的空间光调制器来光学实现这些曝光功能。在这里,我们将神经传感器作为一种方法,以利用诸如神经网络的可差化的图像处理方法,以端到端的方式将每个像素快门共同发挥作用。此外,我们演示了如何利用新兴的可编程和可重新配置的传感器处理器,直接在传感器上实现优化的曝光功能。我们的系统考虑了传感器的具体限制,以优化物理上可行的光学码,并在模拟和实验中评估其对快照HDR和高速压缩成像的性能。

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