Video object recognition and modeling by SIFT matching optimization

Authors: Bruno, A., Greco, L. and La Cascia, M.

Journal: ICPRAM 2014 - Proceedings of the 3rd International Conference on Pattern Recognition Applications and Methods

Pages: 662-670

ISBN: 9789897580185

DOI: 10.5220/0004828006620670

Abstract:

In this paper we present a novel technique for object modeling and object recognition in video. Given a set of videos containing 360 degrees views of objects we compute a model for each object, then we analyze short videos to determine if the object depicted in the video is one of the modeled objects. The object model is built from a video spanning a 360 degree view of the object taken against a uniform background. In order to create the object model, the proposed techniques selects a few representative frames from each video and local features of such frames. The object recognition is performed selecting a few frames from the query video, extracting local features from each frame and looking for matches in all the representative frames constituting the models of all the objects. If the number of matches exceed a fixed threshold the corresponding object is considered the recognized objects .To evaluate our approach we acquired a dataset of 25 videos representing 25 different objects and used these videos to build the objects model. Then we took 25 test videos containing only one of the known objects and 5 videos containing only unknown objects. Experiments showed that, despite a significant compression in the model, recognition results are satisfactory. Copyright © 2014 SCITEPRESS.

Source: Scopus

Video object recognition and modeling by SIFT matching optimization

Authors: Bruno, A., Greco, L. and La Cascia, M.

Pages: 662-670

https://www.scopus.com/inward/record.uri?eid=2-s2.0-84902336506&partnerID=40&md5=37182dfdf756b34bba11fead6d62dbe6

Source: Manual