Shape Classification Using the Inner-Distance
University of Maryland, College Park
Abstract
Part structure and articulation are of fundamental importance in computer and human vision. We propose using the inner-distance to build shape descriptors that are robust to articulation and capture part structure. The inner-distance is defined as the length of the shortest path between landmark points within the shape silhouette. We show that it is articulation insensitive and more effective at capturing part structures than the Euclidean distance. This suggests that the inner-distance can be used as a replacement for the Euclidean distance to build more accurate descriptors for complex shapes, especially for those with articulated parts. In addition, texture information along the shortest path can be used to…
Citation impact
- FWCI
- 46.03
- Percentile
- 100%
- References
- 55
Authors
2Topics & keywords
- Silhouette
- Artificial intelligence
- Distance transform
- Euclidean distance
- Computer vision
- Pattern recognition (psychology)
- Invariant (physics)
- Computer science
- Sustainable cities and communities