The Visual Concept Detection Task in ImageCLEF 2008
نویسندگان
چکیده
The Visual Concept Detection Task (VCDT) of ImageCLEF 2008 is described. A database of 2,827 images were manually annotated with 17 concepts. Of these, 1,827 were used for training and 1,000 for testing the automated assignment of categories. In total 11 groups participated and submitted 53 runs. The runs were evaluated using ROC curves, from which the Area Under the Curve (AUC) and Equal Error Rate (EER) were calculated. For each concept, the best runs obtained an AUC of 80% or above.
منابع مشابه
The Visual Concept Detection Task in ImageCLEF
The Visual Concept Detection Task (VCDT) of ImageCLEF 2008 is described. A database of 2,827 images were manually annotated with 17 concepts. Of these, 1,827 were used for training and 1,000 for testing the automated assignment of categories. In total 11 groups participated and submitted 53 runs. The runs were evaluated using ROC curves, from which the Area Under the Curve (AUC) and Equal Error...
متن کاملSZTAKI @ ImageCLEF 2008: Visual Concept Detection
We describe our approach to the ImageCLEF-VisualConcept 2008 task. Our method is based on image segmentation, using a feature vector describing the visual content of image segments or the entire image. Logistic regression was used for classi cation. Images were segmented by a home developed segmenter. While in this preliminary report classi cation by global image features performed best, prelim...
متن کاملFeature Annotation for Visual Concept Detection in ImageCLEF 2008
This paper shows our work on CLEF 2008. Our group joined the Visual Concept Detection Task of ImageCLEF 2008 this year. We submitted one run (run id: HJ_FA) for the evaluation. In the run, we applied a method called “Feature Annotation” to detect visual concept for the predefined concepts and we want to know how this information help in solving the photographic retrieval task. The applied metho...
متن کاملThe University of Amsterdam's Concept Detection System at ImageCLEF 2010
Our group within the University of Amsterdam participated in the large-scale visual concept detection task of ImageCLEF 2010. The submissions from our visual concept detection system have resulted in the best visual-only run in the per-concept evaluation. In the per-image evaluation , it achieves the highest score in terms of example-based F-measure across all types of runs.
متن کاملCNRS TELECOM ParisTech at ImageCLEF 2016 Scalable Concept Image Annotation Task: Overcoming the Scarcity of Training Data
We introduce our participation at the ImageCLEF 2016 scalable concept detection and localization task. As in ImageCLEF 2015, this edition focuses on generating not only annotations (concept detection) but also localizing concepts into a large image collection. In our runs, we focus mainly on concept detection; our solution is purely visual and based on deep features combined with standard linea...
متن کامل