Title :
Characterization of SURF and BRISK Interest Point Distribution for Distributed Feature Extraction in Visual Sensor Networks
Author :
Dan, Gyorgy ; Khan, Muhammad Altamash ; Fodor, Viktoria
Author_Institution :
Sch. of Electr. Eng., KTH R. Inst. of Technol., Stockholm, Sweden
Abstract :
We study the statistical characteristics of SURF and BRISK interest points and descriptors, with the aim of supporting the design of distributed processing across sensor nodes in a resource -constrained visual sensor network (VSN). Our results show high variability in the density, the spatial distribution , and the octave layer distribution of the interest points. The high variability implies that balancing the processing load among the sensor nodes is a very challenging task, and obtaining a priori information is essential, e.g., through prediction . Our results show that if a priori information is available about the images, then Top- M interest point selection, limited , octave-based processing at the camera node, together with area-based interest point detection and extraction at the processing nodes, can balance the processing load and limit the transmission cost in the network . Complete interest point detection at the camera node with optimized descriptor extraction delegation to the processing nodes in turn can further decrease the transmission load and allow a better balance of the processing load among the network nodes.
Keywords :
feature extraction; image sensors; BRISK; SURF; Topinterest point selection; area-based interest point detection; area-based interest point extraction; camera node; distributed feature extraction; interest point distribution; octave layer distribution; octave-based processing; optimized descriptor extraction delegation; processing load; processing nodes; resource-constrained visual sensor network; sensor nodes; transmission cost; Cameras; Data mining; Distribution functions; Feature extraction; Graphical models; Image coding; Visualization; BRISK; SURF; distributed feature extraction; interest point distribution; visual sensor network (VSN);
Journal_Title :
Multimedia, IEEE Transactions on
DOI :
10.1109/TMM.2015.2406574