This thesis presents a logo spotting framework applied to spotting logo images on document images and focused on document categorization and document retrieval problems. We also present three key-point matching methods: simple key-point matching with nearest neighbor, matching by 2-nearest neighbor matching rule method and matching by two local descriptors at different matching stages. The last two matching methods are improvements of the first method. In addition, using a density-based clustering method to group the matches in our proposed spotting framework can help not only segment the candidate logo region but also reject the incorrect matches as outliers. Moreover, to maximize the performance and to locate logos, an algorithm with two ...
We contribute through this work to the design of a novel variational framework able to match and rec...
International audienceThis paper presents a new approach for logo detection exploiting contour based...
This paper presents a probabilistic approach for logo detection and localization in natural scene im...
This thesis addresses the complex problem of symbol spotting in graphical documents where symbols ar...
This thesis addresses the complex problem of symbol spotting in graphical documents where symbols ar...
In this paper, a complete logo detection/ recognition system for document images is proposed. In the...
In current trends the logos are playing a vital role in industrial and all commercial applications. ...
Nowadays, the high volume of archival documents has made it exigent to store documents in electronic...
Nowadays, the high volume of archival documents has made it exigent to store documents in electronic...
Abstract—In this paper we present a system devoted to spot graphical symbols in camera-acquired docu...
By describing spatial relationships between feature points, we present promising logo recognition an...
International audienceLa détection de motifs graphiques consiste à rechercher dans une collection d'...
We contribute through this work to the design of a novel variational framework able to match and rec...
In this paper we present a method for organizing and index-ing logo digital libraries like the ones ...
This paper addresses the problem of symbol spotting for graphic documents. We propose an approach wh...
We contribute through this work to the design of a novel variational framework able to match and rec...
International audienceThis paper presents a new approach for logo detection exploiting contour based...
This paper presents a probabilistic approach for logo detection and localization in natural scene im...
This thesis addresses the complex problem of symbol spotting in graphical documents where symbols ar...
This thesis addresses the complex problem of symbol spotting in graphical documents where symbols ar...
In this paper, a complete logo detection/ recognition system for document images is proposed. In the...
In current trends the logos are playing a vital role in industrial and all commercial applications. ...
Nowadays, the high volume of archival documents has made it exigent to store documents in electronic...
Nowadays, the high volume of archival documents has made it exigent to store documents in electronic...
Abstract—In this paper we present a system devoted to spot graphical symbols in camera-acquired docu...
By describing spatial relationships between feature points, we present promising logo recognition an...
International audienceLa détection de motifs graphiques consiste à rechercher dans une collection d'...
We contribute through this work to the design of a novel variational framework able to match and rec...
In this paper we present a method for organizing and index-ing logo digital libraries like the ones ...
This paper addresses the problem of symbol spotting for graphic documents. We propose an approach wh...
We contribute through this work to the design of a novel variational framework able to match and rec...
International audienceThis paper presents a new approach for logo detection exploiting contour based...
This paper presents a probabilistic approach for logo detection and localization in natural scene im...