This paper proposes a novel framework to index and retrieve audio content from broadcast database that contains both speech and music. In this framework, we model the acoustic events using hidden Markov models, which are then used to decode the audio content. The decoding results in the form of acoustic token sequence and acoustic lattice are used to generate features for indexing and retrieval with the vector space model. Experiments were carried out on the TRECVID database and the results showed that the proposed framework is effective in audio information retrieval. The results also showed that the features generated from the acoustic lattice provide more accurate information than token sequence.Accepted versio
Colloque sur invitation. internationale.International audienceThis paper presents an overview of aud...
The content-based classification and retrieval of real-world audio clips is one of the challenging t...
This thesis explores unsupervised algorithms for pattern discovery and retrieval in audio and speech...
This paper proposes a novel framework to index and retrieve audio content from broadcast database th...
This paper proposes a novel framework to index and retrieve audio content from broadcast database th...
We propose a method for automatic fine-scale audio description that draws inspiration from ontologic...
The audio signals can provide rich semantic cues for analyzing multimedia content, so audio informat...
Abstract—Digital music has become prolific in the web in recent decades. Automated recommendation sy...
A new algorithm for content-based audio information retrieval is introduced in this work. Assuming t...
This paper presents an overview of audio indexing, which has emerged very recently as a research top...
A typical content-based audio management system deals with three aspects namely audio segmentation a...
This paper describes a complete, scalable and extensible content-based retrieval system for news bro...
This paper presents a novel approach to robust, content-based retrieval of digital music. We formula...
This paper describes a technique for audio dips retrieval. The audio clips are modeled using a commo...
This paper proposes a novel framework for music content indexing and retrieval. The music structure ...
Colloque sur invitation. internationale.International audienceThis paper presents an overview of aud...
The content-based classification and retrieval of real-world audio clips is one of the challenging t...
This thesis explores unsupervised algorithms for pattern discovery and retrieval in audio and speech...
This paper proposes a novel framework to index and retrieve audio content from broadcast database th...
This paper proposes a novel framework to index and retrieve audio content from broadcast database th...
We propose a method for automatic fine-scale audio description that draws inspiration from ontologic...
The audio signals can provide rich semantic cues for analyzing multimedia content, so audio informat...
Abstract—Digital music has become prolific in the web in recent decades. Automated recommendation sy...
A new algorithm for content-based audio information retrieval is introduced in this work. Assuming t...
This paper presents an overview of audio indexing, which has emerged very recently as a research top...
A typical content-based audio management system deals with three aspects namely audio segmentation a...
This paper describes a complete, scalable and extensible content-based retrieval system for news bro...
This paper presents a novel approach to robust, content-based retrieval of digital music. We formula...
This paper describes a technique for audio dips retrieval. The audio clips are modeled using a commo...
This paper proposes a novel framework for music content indexing and retrieval. The music structure ...
Colloque sur invitation. internationale.International audienceThis paper presents an overview of aud...
The content-based classification and retrieval of real-world audio clips is one of the challenging t...
This thesis explores unsupervised algorithms for pattern discovery and retrieval in audio and speech...