Publication | Closed Access
Spatial Priors for Part-Based Recognition Using Statistical Models
279
Citations
7
References
2005
Year
Unknown Venue
EngineeringMachine LearningObject CategorizationBiometricsDifferent Spatial PriorsImage AnalysisData SciencePattern RecognitionRobot LearningComputational GeometryVision RecognitionMachine VisionObject DetectionComputer ScienceJoint Gaussian ModelsDeep LearningSpatial PriorsMedical Image Computing3D Object RecognitionComputer VisionSpatial VerificationObject RecognitionSpatial Structure
We present a class of statistical models for part-based object recognition that are explicitly parameterized according to the degree of spatial structure they can represent. These models provide a way of relating different spatial priors that have been used for recognizing generic classes of objects, including joint Gaussian models and tree-structured models. By providing explicit control over the degree of spatial structure, our models make it possible to study the extent to which additional spatial constraints among parts are actually helpful in detection and localization, and to consider the tradeoff in representational power and computational cost. We consider these questions for object classes that have substantial geometric structure, such as airplanes, faces and motorbikes, using datasets employed by other researchers to facilitate evaluation. We find that for these classes of objects, a relatively small amount of spatial structure in the model can provide statistically indistinguishable recognition performance from more powerful models, and at a substantially lower computational cost.
| Year | Citations | |
|---|---|---|
Page 1
Page 1