A number of computational imaging techniques have been introduced to improve image quality by increasing light throughput. These techniques use optical coding to measure a stronger signal level. However, the performance of these techniques is limited by the decoding step, which amplifies noise. While it is well understood that optical coding can increase performance at low light levels, little is known about the quantitative performance advantage of computational imaging in general settings. In this paper, we derive the performance bounds for various computational imaging techniques. We then discuss the implications of these bounds for several real-world scenarios (illumination conditions, scene properties and sensor noise characteristics)....
Abstract—Over the last decade, a number of Computational Imag-ing (CI) systems have been proposed fo...
Computational imaging system design involves the joint optimization of hardware and software to deli...
We investigate algorithmic progress in image classification on ImageNet, perhaps the most well-known...
For centuries, cameras were designed to closely mimic the human visual system. With the rapid increa...
Over the last decade, a number of Computational Imaging (CI) systems have been proposed for tasks su...
Computational Imaging (CI) is an essential front-line building block for a wide range of application...
Computational Imaging (CI) is an essential front-line building block for a wide range of application...
Computational Imaging (CI) systems that exploit opti-cal multiplexing and algorithmic demultiplexing...
A computational camera uses a combination of optics and software to produce images that cannot be ta...
Imaging systems play an important role in many diverse applications. Requirements for these applicat...
The traditional approach to imaging system design places the sole burden of image formation on optic...
Traditional optical imaging systems have constrained angular and spatial resolution, depth of field,...
Computational imaging and sensing leverages the joint-design of optics, detectors and processing to ...
Image processing algorithms have developed rapidly in recent years. Imaging functions are becoming m...
In computational imaging by pattern projection, a sequence of microstructured light patterns codifie...
Abstract—Over the last decade, a number of Computational Imag-ing (CI) systems have been proposed fo...
Computational imaging system design involves the joint optimization of hardware and software to deli...
We investigate algorithmic progress in image classification on ImageNet, perhaps the most well-known...
For centuries, cameras were designed to closely mimic the human visual system. With the rapid increa...
Over the last decade, a number of Computational Imaging (CI) systems have been proposed for tasks su...
Computational Imaging (CI) is an essential front-line building block for a wide range of application...
Computational Imaging (CI) is an essential front-line building block for a wide range of application...
Computational Imaging (CI) systems that exploit opti-cal multiplexing and algorithmic demultiplexing...
A computational camera uses a combination of optics and software to produce images that cannot be ta...
Imaging systems play an important role in many diverse applications. Requirements for these applicat...
The traditional approach to imaging system design places the sole burden of image formation on optic...
Traditional optical imaging systems have constrained angular and spatial resolution, depth of field,...
Computational imaging and sensing leverages the joint-design of optics, detectors and processing to ...
Image processing algorithms have developed rapidly in recent years. Imaging functions are becoming m...
In computational imaging by pattern projection, a sequence of microstructured light patterns codifie...
Abstract—Over the last decade, a number of Computational Imag-ing (CI) systems have been proposed fo...
Computational imaging system design involves the joint optimization of hardware and software to deli...
We investigate algorithmic progress in image classification on ImageNet, perhaps the most well-known...