2 research outputs found

    Real-time hypothesis driven feature extraction on parallel processing architectures

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    Feature extraction in content-based indexing of media streams is often computational intensive. Typically, a parallel processing architecture is necessary for real-time performance when extracting features brute force. On the other hand, Bayesian network based systems for hypothesis driven feature extraction, which selectively extract relevant features one-by-one, have in some cases achieved real-time performance on single processing element architectures. In this paper we propose a novel technique which combines the above two approaches. Features are selectively extracted in parallelizable sets, rather than one-by-one. Thereby, the advantages of parallel feature extraction can be combined with the advantages of hypothesis driven feature extraction. The technique is based on a sequential backward feature set search and a correlation based feature set evaluation function. In order to reduce the problem of higher-order feature-content/feature-feature correlation, causally complexly interacting features are identified through Bayesian network d-separation analysis and combined into joint features. When used on a moderately complex object-tracking case, the technique is able to select parallelizable feature sets real-time in a goal oriented fashion, even when some features are pairwise highly correlated and causally complexly interacting
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