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The paper mainly discusses the speech keyword recognition system dealing with the audio streaming media. With the help of the Microsoft Windows Media Format SDK (WMFSDK), a powerful front-end interface module is designed to extract audio stream from different streaming media and convert it to the audio format
This paper proposes a new approach for keyword spotting, which is based on large margin and kernel methods rather than on HMMs. Unlike previous approaches, the proposed method employs a discriminative learning procedure, in which the learning phase aims at achieving a high area under the ROC curve, as this quantity is
In traditional keyword spotting (KWS) systems, confidence measure (CM) of each keyword is computed from normalized acoustic likelihoods. In addition to likelihood based scores, some keyword dependent features named predictor features such as duration and prosodic features could be defined to improve the performance of
This work proposes a voice-activity home care system which can construct a life log associated with voices at home. Accordingly, the techniques of sound-pressure-level calculation, abnormal sound detection, noise reduction, text-independent speaker recognition and keyword spotting are developed. In abnormal sound
One of the most serious problems that conventional knowledge management (KM) encompasses has been pointed out tardy and ineffective acquisition of knowledge. To resolve this problem, knowledge must be autonomously acquired according to its context of use by applying the technique of keyword extraction in machine
are mined to extract keywords for the query. We conducted extensive experiments over the TRECVID 2005 corpus and showed the superiority of the proposed approach to using only the mining process on the original video for annotation. This work represents the first attempt at unsupervised automatic video annotation
content providers rely on keywords to perform the classification, while active techniques for automatic video classification focus on utilizing multi-modal features. However, in our settings, we argue that both approaches are not sufficient to solve the problem effectively. Keywords based method is very limited in terms of
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