Markus Koskela, Peter Wilkins, Tomasz Adamek, Alan F. Smeaton, and Noel E. O'Connor. Online Proceedings of the TRECVID 2006 Workshop. Gaithersburg, MD, USA. November 2006.
PDF version available here.
In this paper we describe our retrieval system and experiments performed for the automatic search task in TRECVid 2006. We submitted the following six automatic runs:
F A 1 DCU-Base 6
: Baseline run using only ASR/MT text
features.
F A 2 DCU-TextVisual 2
: Run using text and visual
features.
F A 2 DCU-TextVisMotion 5
: Run using text, visual,
and motion features.
F B 2 DCU-Visual-LSCOM 3
: Text and visual features
combined with concept detectors.
F B 2 DCU-LSCOM-Filters 4
: Text, visual, and motion
features with concept detectors.
F B 2 DCU-LSCOM-2 1
: Text, visual, motion, and
concept detectors with negative concepts.
The experiments were designed both to study the addition of motion features and separately constructed models for semantic concepts, to runs using only textual and visual features, as well as to establish a baseline for the manually-assisted search runs performed within the collaborative K-Space project and described in the corresponding TRECVid 2006 notebook paper. The results of the experiments indicate that the performance of automatic search can be improved with suitable concept models. This, however, is very topic-dependent and the questions of when to include such models and which concept models should be included, remain unanswered. Secondly, using motion features did not lead to performance improvement in our experiments. Finally, it was observed that our text features, despite displaying a rather poor performance overall, may still be useful even for generic search topics.
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