Loading [a11y]/accessibility-menu.js
Birdlets: Subordinate categorization using volumetric primitives and pose-normalized appearance | IEEE Conference Publication | IEEE Xplore

Birdlets: Subordinate categorization using volumetric primitives and pose-normalized appearance


Abstract:

Subordinate-level categorization typically rests on establishing salient distinctions between part-level characteristics of objects, in contrast to basic-level categoriza...Show More

Abstract:

Subordinate-level categorization typically rests on establishing salient distinctions between part-level characteristics of objects, in contrast to basic-level categorization, where the presence or absence of parts is determinative. We develop an approach for subordinate categorization in vision, focusing on an avian domain due to the fine-grained structure of the category taxonomy for this domain. We explore a pose-normalized appearance model based on a volumetric poselet scheme. The variation in shape and appearance properties of these parts across a taxonomy provides the cues needed for subordinate categorization. Training pose detectors requires a relatively large amount of training data per category when done from scratch; using a subordinate-level approach, we exploit a pose classifier trained at the basic-level, and extract part appearance and shape information to build subordinate-level models. Our model associates the underlying image pattern parameters used for detection with corresponding volumetric part location, scale and orientation parameters. These parameters implicitly define a mapping from the image pixels into a pose-normalized appearance space, removing view and pose dependencies, facilitating fine-grained categorization from relatively few training examples.
Date of Conference: 06-13 November 2011
Date Added to IEEE Xplore: 12 January 2012
ISBN Information:

ISSN Information:

Conference Location: Barcelona

Contact IEEE to Subscribe

References

References is not available for this document.