Neural Hopfield-ensemble for multi-class head pose detection
Proceedings of International Joint Conference on Neural Networks (IJCNN 2013),
pages 1327--1334,
- Aug 2013
Multi-class object detection is perhaps the most
important task for many computer vision systems and mobile robots. In this work we will show that Hopfield Neural
Network (HNN) ensembles can successfully detect and classify
objects from several classes by taking advantage of head-pose
estimation. The single HNNs are using pixel sums of Haarlike features as input, resulting in HNNs with a small number
of neurons. An advantage of using these in ensembles is their
compact form. Although it was shown that such HNNs can only
memorise few patterns, by utilising a naive-Bayes mechanism
we were able to exploit the multi-class ability of single HNNs
within an ensemble. In this work we report successful head
pose classification, which presents a 4-class problem (3 poses
+ negatives). Results show that successful classification can be
achieved with small training sets and ensembles, making this
approach an interesting choice for online learning and robotics.
@InProceedings{MMW13, author = {Meins, Nils and Magg, Sven and Wermter, Stefan}, title = {Neural Hopfield-ensemble for multi-class head pose detection}, booktitle = {Proceedings of International Joint Conference on Neural Networks (IJCNN 2013)}, editors = {}, number = {}, volume = {}, pages = {1327--1334}, year = {2013}, month = {Aug}, publisher = {IEEE}, doi = {}, }