LIG and LIRIS at TRECVID 2008: High Level Feature Extraction and Collaborative Annotation
نویسنده
چکیده
This paper describes our participations of LIG and LIRIS to the TRECVID 2008 High Level Features detection task. We evaluated several fusion strategies and especially rank fusion. Results show that including as many low-level and intermediate features as possible is the best strategy, that SIFT features are very important, that the way in which the fusion from the various low-level and intermediate features does matter, that the type of mean (arithmetic, geometric and harmonic) does matter. LIG and LIRIS best runs respectively have a Mean Inferred Average Precision of 0.0833 and 0.0598; both above TRECVID 2008 HLF detection task median performance. LIG and LIRIS also co-organized the TRECVID 2008 collaborative annotation. 40 teams did 1235428 annotations. The development collection was annotated at least once at 100%, at least twice at 37.6%, at least three times at 3.99% and at least four times at 0.06%. Thanks to the active learning and active cleaning used approach, the annotations that were done multiple times were those for which the risk of error was maximum.
منابع مشابه
THU and ICRC at TRECVID 2008
High level feature extraction ID MAP Training set Testing set Brief description run1 0.116 LIG & CAS 1frame/shot & 3frame/shot baseline+keypoint run2 0.123 LIG & CAS 3frame/shot baseline run3 0.057 CAS & Flickr & Peekaboom 1frame/shot & 3frame/shot trecvid+flickr+peekaboom run4 0.103 CAS & Flickr & Peekaboom 1frame/shot & 3frame/shot borda fusion for run3 and run2 run5 0.080 CAS 1frame/shot key...
متن کاملQuaero at TRECVID 2010: Semantic Indexing
The Quaero group is a consortium of French and German organizations working on Multimedia Indexing and Retrieval. LIG, INRIA and KIT participated to the semantic indexing task and LIG participated to the organization of this task. This paper describes these participations. For the semantic indexing task, our approach uses a six-stages processing pipelines for computing scores for the likelihood...
متن کاملImperial College and Johns Hopkins University at TRECVID
We describe our experiments for the high-level feature extraction and search tasks. For the search task, we tested the system we have used in previous years, which encapsulates content based image search, image browsing, automated image annotation and named entity extraction. For the feature task we apply the nonparametric density estimation model and the HMM-based concept specific image model.
متن کاملLIG at TRECVID 2009: Hierarchical Fusion for High Level Feature Extraction
We investigated in this work a hierarchical fusion strategy for fusing the outputs of hundreds of descriptors × classifier combinations. Over one hundred descriptors gathered in the context of the IRIM consortium were used for HLF detection with up to four different classifiers. The produced classification scores are then fused in order to produce a unique classification score for each video sh...
متن کامل