Noel E. O'Connor
Dublin City University
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Featured researches published by Noel E. O'Connor.
international conference on multimedia retrieval | 2016
Eva Mohedano; Kevin McGuinness; Noel E. O'Connor; Amaia Salvador; Ferran Marqués; Xavier Giro-i-Nieto
This work proposes a simple instance retrieval pipeline based on encoding the convolutional features of CNN using the bag of words aggregation scheme (BoW). Assigning each local array of activations in a convolutional layer to a visual word produces an assignment map, a compact representation that relates regions of an image with a visual word. We use the assignment map for fast spatial reranking, obtaining object localizations that are used for query expansion. We demonstrate the suitability of the BoW representation based on local CNN features for instance retrieval, achieving competitive performance on the Oxford and Paris buildings benchmarks. We show that our proposed system for CNN feature aggregation with BoW outperforms state-of-the-art techniques using sum pooling at a subset of the challenging TRECVid INS benchmark.
acm multimedia | 2014
Eva Mohedano; Graham Healy; Kevin McGuinness; Xavier Giro-i-Nieto; Noel E. O'Connor; Alan F. Smeaton
This paper explores the potential of brain-computer interfaces in segmenting objects from images. Our approach is centered around designing an effective method for displaying the image parts to the users such that they generate measurable brain reactions. When an image region, specifically a block of pixels, is displayed we estimate the probability of the block containing the object of interest using a score based on EEG activity. After several such blocks are displayed, the resulting probability map is binarized and combined with the GrabCut algorithm to segment the image into object and background regions. This study shows that BCI and simple EEG analysis are useful in locating object boundaries in images.
Multimedia Tools and Applications | 2015
Eva Mohedano; Graham Healy; Kevin McGuinness; Xavier Giro-i-Nieto; Noel E. O'Connor; Alan F. Smeaton
This paper extends our previous work on the potential of EEG-based brain computer interfaces to segment salient objects in images. The proposed system analyzes the Event Related Potentials (ERP) generated by the rapid serial visual presentation of windows on the image. The detection of the P300 signal allows estimating a saliency map of the image, which is used to seed a semi-supervised object segmentation algorithm. Thanks to the new contributions presented in this work, the average Jaccard index was improved from 0.47 to 0.66 when processed in our publicly available dataset of images, object masks and captured EEG signals. This work also studies alternative architectures to the original one, the impact of object occupation in each image window, and a more robust evaluation based on statistical analysis and a weighted F-score.
arXiv: Information Retrieval | 2016
Cristian Reyes; Eva Mohedano; Kevin McGuinness; Noel E. O'Connor; Xavier Giro-i-Nieto
This work presents a retrieval pipeline and evaluation scheme for the problem of finding the last appearance of personal objects in a large dataset of images captured from a wearable camera. Each personal object is modelled by a small set of images that define a query for a visual search engine.The retrieved results are reranked considering the temporal timestamps of the images to increase the relevance of the later detections. Finally, a temporal interleaving of the results is introduced for robustness against false detections. The Mean Reciprocal Rank is proposed as a metric to evaluate this problem. This application could help into developing personal assistants capable of helping users when they do not remember where they left their personal belongings.
international conference on multimedia retrieval | 2015
Eva Mohedano; Kevin McGuinness; Graham Healy; Noel E. O'Connor; Alan F. Smeaton; Amaia Salvador; Sergi Porta; Xavier Giro-i-Nieto
This paper explores the potential for using Brain Computer Interfaces (BCI) as a relevance feedback mechanism in content-based image retrieval. Several experiments are performed using a rapid serial visual presentation (RSVP) of images at different rates (5Hz and 10Hz) on 8 users with different degrees of familiarization with BCI and the dataset. We compare the feedback from the BCI and mouse-based interfaces in a subset of TRECVid images, finding that, when users have limited time to annotate the images, both interfaces are comparable in performance. Comparing our best users in a retrieval task, we found that EEG-based relevance feedback can outperform mouse-based feedback.
computer vision and pattern recognition | 2016
Junting Pan; Elisa Sayrol; Xavier Giro-i-Nieto; Kevin McGuinness; Noel E. O'Connor
computer vision and pattern recognition | 2017
Marc Assens Reina; Xavier Giro-i-Nieto; Kevin McGuinness; Noel E. O'Connor
McGuinness, Kevin and Mohedano, Eva and Zhang, Zhenxing and Hu, Feiyan and Albatal, Rami and Gurrin, Cathal and O'Connor, Noel E. and Smeaton, Alan F. and Salvador, Amaia and Giró-i-Nieto, Xavier and Ventura, Carles (2014) Insight Centre for Data Analytics (DCU) at TRECVid 2014: instance search and semantic indexing tasks. In: TRECVid 2014, 8-12 Nov 2014, Orlando FL.. | 2014
Kevin McGuinness; Eva Mohedano; Zhenxing Zhang; Feiyan Hu; Rami Abatal; Cathal Gurrin; Noel E. O'Connor; Alan F. Smeaton; Amaia Salvador Aguilera; Xavier Giró i Nieto; Carles Ventura
Archive | 2011
Milan Redzic; Conor Brennan; Noel E. O'Connor
Wilkins, Peter and Kelly, Philip and Ó Conaire, Ciarán and Foures, Thomas and Smeaton, Alan F. and O'Connor, Noel E. (2008) Dublin City University at TRECVID 2008. In: TRECVid 2008, 17-18 November 2008, Gaithersburg, MD. | 2008
Peter Wilkins; Philip Kelly; Ciarán Ó Conaire; Thomas Fourès; Alan F. Smeaton; Noel E. O'Connor