Traditional approaches to three dimensional object recognition exploit the relationship between three dimensional object geometry and two dimensional image geometry. The capability of object recognition systems can be improved by also incorporating information about the color of object surfaces. We derive invariants of local color pixel distributions that are independent of viewpoint and the configuration, intensity, and spectral content of the scene illumination. These invariants capture information about the distribution of spectral reflectance which is intrinsic to a surface and thereby provide substantial discriminatory power for identifying a wide range of surfaces. These invariants can be computed efficiently from color image regions without requiring any form of segmentation. We have implemented an object recognition system that indexes into a database of models using the invariants and that uses associated geometric information for hypothesis verification and pose estimation. The approach to recognition is based on the computation of local invariants and is therefore relatively insensitive to occlusion. We present several examples demonstrating the system's ability to recognize model objects in cluttered scenes. The discriminatory power of the invariants has been demonstrated by the system's ability to process a large set of regions over complex scenes without generating false hypotheses.<<ETX>>
[1]
W. Eric L. Grimson,et al.
On the Sensitivity of the Hough Transform for Object Recognition
,
1990,
IEEE Trans. Pattern Anal. Mach. Intell..
[2]
Ramesh C. Jain,et al.
Three-dimensional object recognition
,
1985,
CSUR.
[3]
Thomas O. Binford,et al.
Survey of Model-Based Image Analysis Systems
,
1982
.
[4]
Brian V. Funt,et al.
Color Constant Color Indexing
,
1995,
IEEE Trans. Pattern Anal. Mach. Intell..
[5]
G. Healey,et al.
Global color constancy: recognition of objects by use of illumination-invariant properties of color distributions
,
1994
.
[6]
Makoto Nagao,et al.
Region extraction and shape analysis in aerial photographs
,
1979
.