In this paper we present a recognizer of sketched symbols based on Latent-Dynamic Conditional Random Fields (LDCRF), a discriminative model for sequence classification. The LDCRF model classifies unsegmented sequences of strokes into domain symbols by taking into account contextual and temporal information. In particular, LDCRFs learn the extrinsic dynamics among strokes by modeling a continuous stream of symbol labels, and learn internal stroke sub-structure by using intermediate hidden states. The performance of our work is evaluated in the electric circuit domain
We present a new semi-supervised training procedure for conditional random elds (CRFs) that can be u...
We present a new semi-supervised training procedure for conditional random fields (CRFs) that can be...
Proceedings of: 8th International Conference on Hybrid Artificial Intelligence Systems (HAIS 2013). ...
In this paper we present a recognizer of sketched symbols based on Latent-Dynamic Conditional Random...
In this paper we propose a two-stage method for recognizing sketched symbols that combine the use of...
We propose a new discriminative framework, namely Hidden Dynamic Conditional Random Fields (HD-CRFs)...
Natural language processing is a useful processing technique of language data, such as text and spee...
Many problems in vision involve the prediction of a class label for each frame in an unsegmented seq...
We propose a new sketch recognition framework that combines a rich representation of low level visua...
In sequence modeling, we often wish to represent complex interaction between labels, such as when pe...
In sequence modeling, we often wish to represent complex interaction between labels, such as when pe...
Many problems in vision involve the prediction of a class label for each frame in an unsegmented seq...
Learning a sequence classifier means learning to predict a sequence of output tags based on a set of...
To process data like text and speech, Natural Language Processing (NLP) is a valuable tool. As on of...
This paper presents a semi-supervised co-training approach for discriminative sequential learning mo...
We present a new semi-supervised training procedure for conditional random elds (CRFs) that can be u...
We present a new semi-supervised training procedure for conditional random fields (CRFs) that can be...
Proceedings of: 8th International Conference on Hybrid Artificial Intelligence Systems (HAIS 2013). ...
In this paper we present a recognizer of sketched symbols based on Latent-Dynamic Conditional Random...
In this paper we propose a two-stage method for recognizing sketched symbols that combine the use of...
We propose a new discriminative framework, namely Hidden Dynamic Conditional Random Fields (HD-CRFs)...
Natural language processing is a useful processing technique of language data, such as text and spee...
Many problems in vision involve the prediction of a class label for each frame in an unsegmented seq...
We propose a new sketch recognition framework that combines a rich representation of low level visua...
In sequence modeling, we often wish to represent complex interaction between labels, such as when pe...
In sequence modeling, we often wish to represent complex interaction between labels, such as when pe...
Many problems in vision involve the prediction of a class label for each frame in an unsegmented seq...
Learning a sequence classifier means learning to predict a sequence of output tags based on a set of...
To process data like text and speech, Natural Language Processing (NLP) is a valuable tool. As on of...
This paper presents a semi-supervised co-training approach for discriminative sequential learning mo...
We present a new semi-supervised training procedure for conditional random elds (CRFs) that can be u...
We present a new semi-supervised training procedure for conditional random fields (CRFs) that can be...
Proceedings of: 8th International Conference on Hybrid Artificial Intelligence Systems (HAIS 2013). ...