Publication | Closed Access
A coarse-to-fine strategy for multiclass shape detection
126
Citations
34
References
2004
Year
EngineeringMachine LearningFeature DetectionStatistical Shape AnalysisBiometricsShape AnalysisComputer-aided DesignImage AnalysisData SciencePattern RecognitionBiostatisticsComputational GeometryMulticlass Shape DetectionVision RecognitionGeometric ModelingMultiple Shape ClassesMachine VisionNaive BayesComputer ScienceImage SimilarityMedical Image ComputingComputer VisionNatural SciencesObject RecognitionShape Modeling
Multiclass shape detection, in the sense of recognizing and localizing instances from multiple shape classes, is formulated as a two-step process in which local indexing primes global interpretation. During indexing a list of instantiations (shape identities and poses) is compiled, constrained only by no missed detections at the expense of false positives. Global information, such as expected relationships among poses, is incorporated afterward to remove ambiguities. This division is motivated by computational efficiency. In addition, indexing itself is organized as a coarse-to-fine search simultaneously in class and pose. This search can be interpreted as successive approximations to likelihood ratio tests arising from a simple ("naive Bayes") statistical model for the edge maps extracted from the original images. The key to constructing efficient "hypothesis tests" for multiple classes and poses is local ORing; in particular, spread edges provide imprecise but common and locally invariant features. Natural tradeoffs then emerge between discrimination and the pattern of spreading. These are analyzed mathematically within the model-based framework and the whole procedure is illustrated by experiments in reading license plates.
| Year | Citations | |
|---|---|---|
Page 1
Page 1