@InProceedings{PrimusTrecVID2017,
author = {Primus, Manfred Jürgen and Münzer, Bernd and Schoeffmann, Klaus},
booktitle = {Proceedings of TRECVID 2017},
title = {ITEC-UNIKLU Ad-Hoc Video Search Submission 2017},
year = {2017},
address = {NIST, Gaithersburg, MD, USA},
editor = {Awad,George and Butt,Asad and Fiscus,Jonathan and Joy,David and Delgado,Andrew and Michel,Martial and Smeaton,Alan and Graham,Yvette and Kraaij,Wessel and Quénot,Georges and Eskevich,Maria and Ordelman,Roeland and Jones,Gareth and Huet,Benoit},
month = {nov},
pages = {10},
publisher = {NIST, USA},
abstract = {This paper describes our approach used for the fully automatic and manually assisted Ad-hoc Video Search (AVS) task for TRECVID 2017. We focus on the combination of different convolutional neural network models and query optimization. Each of this model focus on a specific query part, which could be, e.g., location, objects, or the wide-ranging ImageNet classes. All classification results are collected in different combinations in Lucene indixes. For the manually assisted run we use a junk filter and different query optimization methods.},
language = {EN},
location = {Gaithersburg, MD, USA},
talkdate = {2017.11.13},
talktype = {poster}
}