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arxiv: 1312.3989 · v1 · pith:556TF3HZnew · submitted 2013-12-14 · 💻 cs.CV · cs.LG

Classifiers With a Reject Option for Early Time-Series Classification

classification 💻 cs.CV cs.LG
keywords classificationearlyrejectsignalclassifierclassifiersforefront-noseodor
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Early classification of time-series data in a dynamic environment is a challenging problem of great importance in signal processing. This paper proposes a classifier architecture with a reject option capable of online decision making without the need to wait for the entire time series signal to be present. The main idea is to classify an odor/gas signal with an acceptable accuracy as early as possible. Instead of using posterior probability of a classifier, the proposed method uses the "agreement" of an ensemble to decide whether to accept or reject the candidate label. The introduced algorithm is applied to the bio-chemistry problem of odor classification to build a novel Electronic-Nose called Forefront-Nose. Experimental results on wind tunnel test-bed facility confirms the robustness of the forefront-nose compared to the standard classifiers from both earliness and recognition perspectives.

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