mercredi 2 février 2011

Image Deblurring using Inertial Measurement Sensors

Image Deblurring using Inertial Measurement Sensors: "




Image Deblurring using Inertial Measurement Sensors

SIGGRAPH 2010



















Neel Joshi Sing Bing Kang C. Lawrence Zitnick Richard Szeliski


Microsoft Research














An SLR Camera instrumented with our image deblurring attachment that uses inertial measurement sensors and the input image in an “aided blind-deconvolution” algorithm to automatically deblur images with spatially-varying blurs (first two images). A blurry input image (third image) and the result of our method (fourth image).


Abstract


We present a deblurring algorithm that uses a hardware attachment
coupled with a natural image prior to deblur images from consumer
cameras. Our approach uses a combination of inexpensive gyroscopes
and accelerometers in an energy optimization framework to
estimate a blur function from the camera’s acceleration and angular
velocity during an exposure. We solve for the camera motion at a
high sampling rate during an exposure and infer the latent image
using a joint optimization. Our method is completely automatic,
handles per-pixel, spatially-varying blur, and out-performs the current
leading image-based methods. Our experiments show that it
handles large kernels – up to at least 100 pixels, with a typical size
of 30 pixels. We also present a method to perform “ground-truth”
measurements of camera motion blur. We use this method to validate
our hardware and deconvolution approach. To the best of our
knowledge, this is the first work that uses 6 DOF inertial sensors
for dense, per-pixel spatially-varying image deblurring and the first
work to gather dense ground-truth measurements for camera-shake
blur.


Examples



















Automatically Deblurred using data from the Sensor Attachment (images are blinking between the blurred image and our deblurred result)














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