Title of article :
Object classification by fusing SVMs and Gaussian mixtures
Author/Authors :
Deselaers، نويسنده , , Thomas and Heigold، نويسنده , , Georg and Ney، نويسنده , , Hermann، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
We present a new technique that employs support vector machines (SVMs) and Gaussian mixture densities (GMDs) to create a generative/discriminative object classification technique using local image features. In the past, several approaches to fuse the advantages of generative and discriminative approaches were presented, often leading to improved robustness and recognition accuracy. Support vector machines are a well known discriminative classification framework but, similar to other discriminative approaches, suffer from a lack of robustness with respect to noise and overfitting. Gaussian mixtures, on the contrary, are a widely used generative technique. We present a method to directly fuse both approaches, effectively allowing to fully exploit the advantages of both. The fusion of SVMs and GMDs is done by representing SVMs in the framework of GMDs without changing the training and without changing the decision boundary. The new classifier is evaluated on the PASCAL VOC 2006 data. Additionally, we perform experiments on the USPS dataset and on four tasks from the UCI machine learning repository to obtain additional insights into the properties of the proposed approach. It is shown that for the relatively rare cases where SVMs have problems, the combined method outperforms both individual ones.
Keywords :
Gaussian mixtures , Generative classifiers , discriminative classifiers , Support vector machine , Local-feature-based object recognition
Journal title :
PATTERN RECOGNITION
Journal title :
PATTERN RECOGNITION