View-invariant alignment and matching of video sequences
Cen Rao, Alexei Gritai, et al.
ICCV 2003
We propose a novel approach of distance-based spatial clustering and contribute a heuristic computation of input parameters for guiding users in the search of interesting cluster constellations. We thereby combine computational geometry with interactive visualization into one coherent framework. Our approach entails displaying the results of the heuristics to users, as shown in Figure 1, providing a setting from which to start the exploration and data analysis. Addition interaction capabilities are available containing visual feedback for exploring further clustering options and is able to cope with noise in the data. We evaluate, and show the benefits of our approach on a sophisticated artificial dataset and demonstrate its usefulness on real-world data. © 1995-2012 IEEE.
Cen Rao, Alexei Gritai, et al.
ICCV 2003
C. Neti, Salim Roukos
ASRU 1997
Arnon Amir, Michael Lindenbaum
IEEE Transactions on Pattern Analysis and Machine Intelligence
Kuan-Yu Chen, Shih-Hung Liu, et al.
EMNLP 2014