KL techniques for optimal processing of time sequential imageryTime-sequential imagery is difficult to analyze because of its high dimensionality. This paper advances a new algorithm that screens input data in an intelligent way, discards data with negligible information, and uses the remaining images to represent the sequence in an optimal compact form. Data are presented to illustrate how this algorithm can be used to do novelty filtering, novelty detection, segmentation, background independent modeling, and classification.
Document ID
19900024683
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
Vermeulen, Pieter (Carnegie-Mellon Univ. Pittsburgh, PA, United States)
Casasent, David (Carnegie-Mellon University Pittsburgh, PA, United States)