6533b7ddfe1ef96bd127480a

RESEARCH PRODUCT

Spherical nonlinear correlations for global invariant three-dimensional object recognition

Pascuala García-martínezCarlos FerreiraJosé J. Vallés

subject

RotationMaterials Science (miscellaneous)3D single-object recognitionStatistics as TopicInformation Storage and RetrievalSensitivity and SpecificityFacial recognition systemIndustrial and Manufacturing EngineeringPattern Recognition Automatedsymbols.namesakeImaging Three-DimensionalOpticsArtificial IntelligenceImage Interpretation Computer-AssistedBusiness and International ManagementInvariant (mathematics)Physicsbusiness.industryCognitive neuroscience of visual object recognitionReproducibility of ResultsImage EnhancementObject detectionNonlinear systemFourier transformAmplitudeNonlinear DynamicssymbolsbusinessAlgorithms

description

We define a nonlinear filtering based on correlations on unit spheres to obtain both rotation- and scale-invariant three-dimensional (3D) object detection. Tridimensionality is expressed in terms of range images. The phase Fourier transform (PhFT) of a range image provides information about the orientations of the 3D object surfaces. When the object is sequentially rotated, the amplitudes of the different PhFTs form a unit radius sphere. On the other hand, a scale change is equivalent to a multiplication of the amplitude of the PhFT by a constant factor. The effect of both rotation and scale changes for 3D objects means a change in the intensity of the unit radius sphere. We define a 3D filtering based on nonlinear operations between spherical correlations to achieve both scale- and rotation-invariant 3D object recognition.

https://doi.org/10.1364/ao.47.000a43