Abstract
We present a simple and efficient method to enhance the perceptual quality of images that contain depth information. Similar to an unsharp mask, the difference between the original depth buffer content and a low-pass filtered copy is utilized to determine information about spatially important areas in a scene. Based on this information we locally enhance the contrast, color, and other parameters of the image. Our technique aims at improving the perception of complex scenes by introducing additional depth cues. The idea is motivated by artwork and findings in the field of neurology, and can be applied to images of any kind, ranging from complex landscape data and technical artifacts, to volume rendering, photograph, and video with depth information.
Supplemental Material
- Adams, A. 1980. The Camera. The Ansel Adams Photography Series. Littel, Brown and Company.Google Scholar
- Beghdadi, A., and le Negrate, A. 1989. Contrast enhancement technique based on local detection of edges. Computer Vision, Graphics, and Image Processing 46, 2, 162--174. Google Scholar
Digital Library
- Bunnell, M. 2005. Dynamic ambient occlusion and indirect lighting. In GPU Gems 2. Addison-Wesley, 223--233.Google Scholar
- Cignoni, P., Scopigno, R., and Tarini, M. 2005. A simple normal enhancement technique for interactive non-photorealistic renderings. Computer & Graphics 29, 1 (feb), 125--133. Google Scholar
Digital Library
- Deussen, O., and Strothotte, T. 2000. Computer-generated pen-and-ink illustration of trees. In Proceedings of ACM SIGGRAPH 2000, 13--18. Google Scholar
Digital Library
- DiCarlo, J. M., and Wandell, B. A. 2000. Rendering high dynamic range images. In Proceedings of SPIE: Image Sensors, vol. 3965, 392--401.Google Scholar
- Eysenck, M., and Keane, M. 2000. Cognitive Psychology. Psychology Press.Google Scholar
- Gooch, A., Gooch, B., Shirley, P., and Cohen, E. 1998. A non-photorealistic lighting model for automatic technical illustration. In Proceedings of ACM SIGGRAPH 98, 447--452. Google Scholar
Digital Library
- Hummel, R. A. 1975. Histogram modification techniques. Computer Graphics and Image Processing 4, 3 (sep), 209--224.Google Scholar
Cross Ref
- Ledda, P., Chalmers, A., Troscianko, T., and Seetzen, H. 2005. Evaluation of tone mapping operators using a high dynamic range display. ACM Transactions on Graphics 24, 3 (aug), 640--648. Google Scholar
Digital Library
- McHugh, S., 2005. Digital photography tutorials. http://www.cambridgeincolour.com/tutorials.htm.Google Scholar
- Meylan, L., and Süsstrunk, S. 2004. Bio-inspired color image enhancement. In Proceedings of SPIE: Human Vision and Electronic Imaging, vol. 5292, 46--56.Google Scholar
- Neycenssac, F. 1993. Contrast enhancement using the laplacian-of-a-gaussian filter. CVGIP: Graphical Models and Image Processing 55, 6, 447--463. Google Scholar
Digital Library
- Pharr, M., and Green, S. 2004. Ambient occlusion. In GPU Gems. Addison-Wesley, 279--292.Google Scholar
- Raskar, R., Tan, K.-H., Feris, R., Yu, J., and Turk, M. 2004. Non-photorealistic camera: Depth edge detection and stylized rendering using multi-flash imaging. ACM Transactions on Graphics 23, 3, 679--688. Google Scholar
Digital Library
- Reinhard, E., and Devlin, K. 2005. Dynamic range reduction inspired by photoreceptor physiology. IEEE Transactions on Visualization and Computer Graphics 11, 1 (jan), 13--24. Google Scholar
Digital Library
- Reinhard, E., Stark, M., Shirley, P., and Ferwerda, J. 2002. Photographic tone reproduction for digital images. ACM Transactions on Graphics 21, 3 (jul), 267--276. Google Scholar
Digital Library
- Saito, T., and Takahashi, T. 1990. Comprehensive rendering of 3-d shapes. Computer Graphics (Proceedings of ACM SIGGRAPH 90) 24, 4, 197--206. Google Scholar
Digital Library
- Scharstein, D., and Szeliski, R. 2003. High-accuracy stereo depth maps using structured light. In Proceedings of Computer Vision and Pattern Recognition, 195--202. Google Scholar
Digital Library
- Starck, J., Murtagh, F., Candes, E., and Donoho, D. 2003. Gray and color image contrast enhancement by the curvelet transform. IEEE Transactions on Image Processing 12, 6, 706--717. Google Scholar
Digital Library
- Stark, J. 2000. Adaptive image contrast enhancement using generalizations of histogram equalization. IEEE Transactions on Image Processing 9, 5 (may), 889--896. Google Scholar
Digital Library
- Winkenbach, G., and Salesin, D. 1994. Computer-generated pen-and-ink illustration. In Proceedings of ACM SIGGRAPH 94, 91--100. Google Scholar
Digital Library
- Zitnick, C. L., Kang, S. B., Uyttendaele, M., Winder, S., and Szeliski, R. 2004. High-quality video view interpolation using a layered representation. ACM Transactions on Graphics 23, 3 (aug), 600--608. Google Scholar
Digital Library
Index Terms
Image enhancement by unsharp masking the depth buffer
Recommendations
Image enhancement by unsharp masking the depth buffer
SIGGRAPH '06: ACM SIGGRAPH 2006 PapersWe present a simple and efficient method to enhance the perceptual quality of images that contain depth information. Similar to an unsharp mask, the difference between the original depth buffer content and a low-pass filtered copy is utilized to ...
The remote sensing image enhancement based on nonsubsampled contourlet transform and unsharp masking
To restrain pseudo-Gibbs phenomenon, low contrast and blurred phenomenon in the process of image enhancement, a new method based on the nonsubsampled contourlet transform and the unsharp masking is proposed in this paper. The proposed method utilizes ...
Image contrast enhancement using unsharp masking and histogram equalization
Contrast enhancement and Mean brightness conservation are two important parameters of image enhancement. A high contrast image is good in subjective quality assessment but also high contrast may cause over or under enhancement in the enhanced image. In ...





Comments