Audio classification based on maximum entropy model
نویسندگان
چکیده
Audio Classification has been investigated for several years. It is one of the key components in audio and video applications. In prior work, the accuracy under complicated condition is not satisfactory enough and the results highly depend on the dataset. In this paper, we present a novel audio classification method based on Maximum Entropy Model. By applying this method on some widely used features, different feature combinations are considered during model training and a better performance can be achieved. When evaluated it in TREC 2002 Video Track’s speech/music feature extraction task, this method works well for both speech and music among participated systems.
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تاریخ انتشار 2003