Abstract

In this paper, a novel solution to the problem of unsupervised stream weight estimation for multi-stream classification tasks is proposed. Our work is based on theoretical results in A. Potamianos et al. (2006) for the two-class problem were the optimal stream weights are shown to be inversely proportional to the single stream misclassification error. These two-class results are applied to the multi-class problem by using models and anti-models (class-specific background models) thus posing the multi-class problem as multiple two-class problems. A nonlinear function of the ratio of the inter- to intra-class distance is proposed as an estimate for single stream classification error and used for stream weight estimation. The proposed unsupervised stream weight estimation algorithm is evaluated on both artificial data and on the problem of audio-visual speech recognition. It is shown that the proposed algorithm achieves results comparable to the supervised minimum-error training approach under most testing conditions.

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