DocumentCode
1258539
Title
Indexing without invariants in 3D object recognition
Author
Beis, Jeffrey S. ; Lowe, David G.
Author_Institution
KnowledgeTech. Consulting Inc., Vancouver, BC, Canada
Volume
21
Issue
10
fYear
1999
fDate
10/1/1999 12:00:00 AM
Firstpage
1000
Lastpage
1015
Abstract
We present a method of indexing 3D objects from single 2D images. The method does not rely on invariant features. This allows a richer set of shape information to be used in the recognition process. We also suggest the kd-tree as an alternative indexing data structure to the standard hash table. This makes hypothesis recovery more efficient in high-dimensional spaces, which are necessary to achieve specificity in large model databases. Search efficiency is maintained in these regimes by the use of best-bin first search. Neighbors recovered from the index are used to generate probability estimates, local within the feature space, which are then used to rank hypotheses for verification. On average, the ranking process greatly reduces the number of verifications required. Our approach is general in that it can be applied to any real-valued feature vector. In addition, it is straightforward to add to our index information from real images regarding the true probability distributions of the feature groupings used for indexing
Keywords
computer vision; indexing; object recognition; probability; stereo image processing; tree data structures; tree searching; 3D object recognition; best-bin first search; data structure; indexing; nearest neighbours; probability; ranking process; trees; Data structures; Indexing; Nearest neighbor searches; Neural networks; Object recognition; Probability distribution; Runtime; Shape; Spatial databases; Telerobotics;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/34.799907
Filename
799907
Link To Document