Title :
Modeling Radiometric Uncertainty for Vision with Tone-Mapped Color Images
Author :
Chakrabarti, Anandaroop ; Ying Xiong ; Baochen Sun ; Darrell, Trevor ; Scharstein, Daniel ; Zickler, Todd ; Saenko, Kate
Author_Institution :
Sch. of Eng. & Appl. Sci., Harvard Univ., Cambridge, MA, USA
Abstract :
To produce images that are suitable for display, tone-mapping is widely used in digital cameras to map linear color measurements into narrow gamuts with limited dynamic range. This introduces non-linear distortion that must be undone, through a radiometric calibration process, before computer vision systems can analyze such photographs radiometrically. This paper considers the inherent uncertainty of undoing the effects of tone-mapping. We observe that this uncertainty varies substantially across color space, making some pixels more reliable than others. We introduce a model for this uncertainty and a method for fitting it to a given camera or imaging pipeline. Once fit, the model provides for each pixel in a tone-mapped digital photograph a probability distribution over linear scene colors that could have induced it. We demonstrate how these distributions can be useful for visual inference by incorporating them into estimation algorithms for a representative set of vision tasks.
Keywords :
computer vision; image colour analysis; statistical distributions; computer vision systems; digital cameras; linear color measurements; linear scene colors; probability distribution; radiometric uncertainty; tone-mapped color images; visual inference; Calibration; Cameras; Image color analysis; Polynomials; Radiometry; Transform coding; Uncertainty; HDR imaging; Radiometric calibration; camera response functions; deblurring; depth estimation; image fusion; image restoration; photometric stereo; signal-dependent noise; statistical models; tone-mapping;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2014.2318713