Abstract. Previous research has shown that speech disfluencies- speech errors that occur in spoken language- affectNLP systems and hence need to be repaired or at least marked. This study presents a hybrid approach that uses different detection techniques for this task where each of these techniques is specialized within its own disfluency domain. A thorough investigation of the used disfluency scheme, which was developed by [1], led us to a detection design where basic rule-matching techniques are combined with machine learning approaches. The aim was both to reduce computational overhead and processing time and also to increase the detection performance. In fact, our system works with an accuracy of 92.9 % and an F-Score of 90.6 % while w...
Speech disfluencies, such as filled pauses or repetitions, are disruptions in the typical flow of sp...
This paper presents a number of experiments focusing on assessing the performance of different machi...
Most existing approaches to disfluency detection heavily rely on human-annotated data, which is expe...
Speech plays a vital role in communication, from expressing oneself, to utilizing speech-based platf...
Speech plays a vital role in communication, from expressing oneself, to utilizing speech-based platf...
We introduce a novel method to jointly parse and detect disfluencies in spoken utterances. Our model...
This paper focuses on disfluency detection across distinct domains using a large set of openSMILE fe...
We propose a novel algorithm to detect disfluency in speech by reformulating the problem as phrase-l...
Disfluency detection is the task of recognizing structural metadata in spoken ut-terances. It has be...
We present an incremental dependency parsing model that jointly performs disfluency detection. The m...
Disfluency detection is the task of recognizing structural metadata in spoken ut-terances. It has be...
Disfluency, though originating from human spoken utterances, is primarily studied as a uni-modal tex...
One of the challenges for computer aided language learn-ing (CALL) is providing high quality feedbac...
We present an incremental dependency parsing model that jointly performs disflu-ency detection. The ...
Unrehearsed spoken language often contains disfluencies. In order to correctly interpret a spoken ut...
Speech disfluencies, such as filled pauses or repetitions, are disruptions in the typical flow of sp...
This paper presents a number of experiments focusing on assessing the performance of different machi...
Most existing approaches to disfluency detection heavily rely on human-annotated data, which is expe...
Speech plays a vital role in communication, from expressing oneself, to utilizing speech-based platf...
Speech plays a vital role in communication, from expressing oneself, to utilizing speech-based platf...
We introduce a novel method to jointly parse and detect disfluencies in spoken utterances. Our model...
This paper focuses on disfluency detection across distinct domains using a large set of openSMILE fe...
We propose a novel algorithm to detect disfluency in speech by reformulating the problem as phrase-l...
Disfluency detection is the task of recognizing structural metadata in spoken ut-terances. It has be...
We present an incremental dependency parsing model that jointly performs disfluency detection. The m...
Disfluency detection is the task of recognizing structural metadata in spoken ut-terances. It has be...
Disfluency, though originating from human spoken utterances, is primarily studied as a uni-modal tex...
One of the challenges for computer aided language learn-ing (CALL) is providing high quality feedbac...
We present an incremental dependency parsing model that jointly performs disflu-ency detection. The ...
Unrehearsed spoken language often contains disfluencies. In order to correctly interpret a spoken ut...
Speech disfluencies, such as filled pauses or repetitions, are disruptions in the typical flow of sp...
This paper presents a number of experiments focusing on assessing the performance of different machi...
Most existing approaches to disfluency detection heavily rely on human-annotated data, which is expe...