Rotation Invariant Object Recognition from One Training Example
Author(s)
Yokono, Jerry Jun; Poggio, Tomaso
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Local descriptors are increasingly used for the task of object recognition because of their perceived robustness with respect to occlusions and to global geometrical deformations. Such a descriptor--based on a set of oriented Gaussian derivative filters-- is used in our recognition system. We report here an evaluation of several techniques for orientation estimation to achieve rotation invariance of the descriptor. We also describe feature selection based on a single training image. Virtual images are generated by rotating and rescaling the image and robust features are selected. The results confirm robust performance in cluttered scenes, in the presence of partial occlusions, and when the object is embedded in different backgrounds.
Date issued
2004-04-27Other identifiers
MIT-CSAIL-TR-2004-025
AIM-2004-010
CBCL-238
Series/Report no.
Massachusetts Institute of Technology Computer Science and Artificial Intelligence Laboratory
Keywords
AI, object recognition, local descriptor, rotation invariant