计算机科学
高动态范围
色调映射
计算机视觉
像素
计算摄影
人工智能
RGB颜色模型
帧速率
Android(操作系统)
卷帘
动态范围
图像传感器
计算机图形学(图像)
图像处理
图像(数学)
物理
光学
百叶窗
操作系统
作者
Samuel W. Hasinoff,Dillon Sharlet,Ryan Geiss,Andrew Adams,Jonathan T. Barron,Florian Kainz,Jiawen Chen,Marc Levoy
标识
DOI:10.1145/2980179.2980254
摘要
Cell phone cameras have small apertures, which limits the number of photons they can gather, leading to noisy images in low light. They also have small sensor pixels, which limits the number of electrons each pixel can store, leading to limited dynamic range. We describe a computational photography pipeline that captures, aligns, and merges a burst of frames to reduce noise and increase dynamic range. Our system has several key features that help make it robust and efficient. First, we do not use bracketed exposures. Instead, we capture frames of constant exposure, which makes alignment more robust, and we set this exposure low enough to avoid blowing out highlights. The resulting merged image has clean shadows and high bit depth, allowing us to apply standard HDR tone mapping methods. Second, we begin from Bayer raw frames rather than the demosaicked RGB (or YUV) frames produced by hardware Image Signal Processors (ISPs) common on mobile platforms. This gives us more bits per pixel and allows us to circumvent the ISP's unwanted tone mapping and spatial denoising. Third, we use a novel FFT-based alignment algorithm and a hybrid 2D/3D Wiener filter to denoise and merge the frames in a burst. Our implementation is built atop Android's Camera2 API, which provides per-frame camera control and access to raw imagery, and is written in the Halide domain-specific language (DSL). It runs in 4 seconds on device (for a 12 Mpix image), requires no user intervention, and ships on several mass-produced cell phones.
科研通智能强力驱动
Strongly Powered by AbleSci AI