Title :
Compressive Distance Classifier Correlation Filter
Author :
Varadarajan, Karthik Mahesh ; Vincze, Markus
Author_Institution :
Tech. Univ. of Vienna, Vienna, Austria
Abstract :
Compressed Sensing (CS) is seen as the pathway to increase the efficiency of sensor systems such as MRI, SAR and SAS while avoiding the huge costs and related processing accompanying high-resolution data acquisition. While there has been a surge in the number of sensor systems and related algorithms using CS, target/object recognition in the sensing domain which offers numerous advantages, is a rather nascent field. The state-of-the-art in this field includes the Smashed Filter (SF), which is a reduced dimensionality maximum likelihood classifier. Nevertheless, the accuracy of the filter remains low for practical applications, especially with variations in scale, translation and rotation in the test data. This paper offers a new type of filter - called the Compressive Distance Classifier Correlation Filter (CDCCF), which applies a transformation in the CS domain thereby increasing the distance between intra-class correlation peaks while reducing the distance between inter-class correlation peaks and is based on the Restricted Isometry Property (RIP) of the compressed manifold and the Johnson Lindenstrauss Lemma. Results presented show that the accuracy of the CDCCF filter is about 70% on a 12 class test data set, which is over a two-fold increase in accuracy over the SF. Confusion matrices, measures of ROC, Mean Average Precision and Accuracy demonstrate the robust performance of the algorithm over SF across different compressive sampling resolutions.
Keywords :
compressed sensing; correlation methods; filtering theory; image classification; image coding; image sampling; image sensors; maximum likelihood detection; object recognition; CDCCF filter; CS domain transformation; Johnson Lindenstrauss Lemma; RIP; Smashed Filter; compressed manifold; compressed sensing; compressive distance classifier correlation filter; compressive sampling resolutions; confusion matrices; high-resolution data acquisition; mean average precision and accuracy; object recognition; reduced dimensionality maximum likelihood classifier; restricted isometry property; rotation variation; scale variation; sensor system efficiency; target recognition; translation variation;
Conference_Titel :
Image Processing (ICIP), 2013 20th IEEE International Conference on
Conference_Location :
Melbourne, VIC
DOI :
10.1109/ICIP.2013.6738681