% Keywords: Cognition % Encoding: utf-8 @InCollection{Ghamsarian2021a, author = {Negin Ghamsarian and Mario Taschwer and Doris Putzgruber-Adamitsch and Stephanie Sarny and Yosuf El-Shabrawi and Klaus Schoeffmann}, booktitle = {Medical Image Computing and Computer Assisted Intervention (MICCAI 2021)}, publisher = {Springer International Publishing}, title = {{LensID: A CNN-RNN-Based Framework Towards Lens Irregularity Detection in Cataract Surgery Videos}}, year = {2021}, month = sep, number = {12908}, pages = {76--86}, abstract = {A critical complication after cataract surgery is the dislocation of the lens implant leading to vision deterioration and eye trauma. In order to reduce the risk of this complication, it is vital to discover the risk factors during the surgery. However, studying the relationship between lens dislocation and its suspicious risk factors using numerous videos is a time-extensive procedure. Hence, the surgeons demand an automatic approach to enable a larger-scale and, accordingly, more reliable study. In this paper, we propose a novel framework as the major step towards lens irregularity detection. In particular, we propose (I) an end-to-end recurrent neural network to recognize the lens-implantation phase and (II) a novel semantic segmentation network to segment the lens and pupil after the implantation phase. The phase recognition results reveal the effectiveness of the proposed surgical phase recognition approach. Moreover, the segmentation results confirm the proposed segmentation network’s effectiveness compared to state-of-the-art rival approaches.}, doi = {10.1007/978-3-030-87237-3_8}, keywords = {Semantic segmentation, Surgical phase recognition, Cataract surgery}, url = {https://link.springer.com/chapter/10.1007/978-3-030-87237-3_8} } @InProceedings{Ghamsarian2020a, author = {Negin Ghamsarian}, booktitle = {Proceedings of the 2020 International Conference on Multimedia Retrieval}, title = {{Enabling Relevance-Based Exploration of Cataract Videos}}, year = {2020}, month = {jun}, pages = {378--382}, publisher = {ACM}, abstract = {Training new surgeons as one of the major duties of experienced expert surgeons demands a considerable supervisory investment of them. To expedite the training process and subsequently reduce the extra workload on their tight schedule, surgeons are seeking a surgical video retrieval system. Automatic workflow analysis approaches can optimize the training procedure by indexing the surgical video segments to be used for online video exploration. The aim of the doctoral project described in this paper is to provide the basis for a cataract video exploration system, that is able to (i) automatically analyze and extract the relevant segments of videos from cataract surgery, and (ii) provide interactive exploration means for browsing archives of cataract surgery videos. In particular, we apply deep-learning-based classification and segmentation approaches to cataract surgery videos to enable automatic phase and action recognition and similarity detection.}, doi = {10.1145/3372278.3391937}, keywords = {Action recognition, Phase recognition, Deep learning, Cataract surgery}, url = {https://dl.acm.org/doi/10.1145/3372278.3391937} } @InProceedings{martinadez2017, author = {Beck, Harald and Bierbaumer, Bruno and Dao-Tran, Minh and Eiter, Thomas and Hellwagner, Hermann and Schekotihin, Konstantin}, booktitle = {Communications (ICC), 2017 IEEE International Conference on}, title = {Stream Reasoning-Based Control of Caching Strategies in CCN Routers}, year = {2017}, address = {Paris, France}, editor = {Beylat, Jean Luc and Sari, Hikmet}, month = {may}, pages = {6}, publisher = {IEEE}, abstract = {Routers in Content-Centric Networking (CCN) may locally cache frequently requested content in order to speed up delivery to end users. Thus, the issue of caching strategies arises, i.e., which content shall be stored and when it should be replaced. In this work, we employ, and study the feasibility of, novel techniques towards intelligent control of CCN routers that autonomously switch between existing caching strategies in response to changing content request patterns. In particular, we present a router architecture for CCN networks that is controlled by rule-based stream reasoning, following the recent formal framework LARS which extends Answer Set Programming for streams. The obtained possibility for flexible router configuration at runtime allows for versatile network control schemes and may help advance the further development of CCN. Moreover, the empirical evaluation of our feasibility study shows that the resulting caching agent may give significant performance gains.}, doi = {10.1109/ICC.2017.7996762}, isbn10 = {978-1-4673-8999-0}, issn = {1938-1883}, keywords = {Cognition, Internet, Switches, Next generation networking, Programming, Computer architecture, Robots}, language = {EN}, location = {Paris}, talkdate = {2017.05.23}, talktype = {registered} } @InProceedings{Marques2013, author = {Marques, Oge and Snyder, Justyn and Lux, Mathias}, booktitle = {CHI '13 Extended Abstracts on Human Factors in Computing Systems}, title = {How Well Do You Know Tom Hanks?: Using a Game to Learn About Face Recognition}, year = {2013}, address = {New York, USA}, editor = {Mackay, W and Brewster, St and Bodker, S}, month = {jan}, pages = {337--342}, publisher = {ACM}, series = {CHI EA '13}, abstract = {Human face recognition abilities vastly outperform computer-vision algorithms working on comparable tasks, especially in the case of poor lighting, bad image quality, or partially hidden faces. In this paper, we describe a novel game with a purpose in which players must guess the name of a celebrity whose face appears blurred. The game combines a successful casual game paradigm with meaningful applications in both human- and computer-vision science. Preliminary user studies were conducted with 28 users and more than 7,000 game rounds. The results supported and extended pre-existing knowledge and hypotheses from controlled scientific experiments, which show that humans are remarkably good at recognizing famous faces, even with a significant degree of blurring. Our results will be further incorporated into research in human vision as well as machine-learning and computer-vision algorithms for face recognition.}, doi = {10.1145/2468356.2468416}, keywords = {computer vision, face recognition, games, human vision}, language = {EN}, talktype = {none}, url = {http://doi.acm.org/10.1145/2468356.2468416} } @InProceedings{Prangl2006a, author = {Prangl, Martin and Hellwagner, Hermann and Bischof, Horst and Szkaliczki, Tibor}, booktitle = {Proceedings of the SPIE Symposium on Medical Imaging 2006}, title = {Realtime automatic metal extraction of medical x-ray images for contrast improvement}, year = {2006}, address = {San Diego}, editor = {Reinhardt, Joseph M and Pluim, Josien P W}, month = mar, pages = {8}, publisher = {SPIE}, series = {Vol. 6144}, abstract = {This paper focuses on an approach for real-time metal extraction of x-ray images taken from modernx-ray machines like C-arms. Such machines are used for vessel diagnostics, surgical interventions, as well as cardiology, neurology and orthopedic examinations. They are very fast in taking images from different angles. For this reason, manual adjustment of contrast is infeasible and automatic adjustment algorithms have been applied to try to select the optimal radiation dose for contrast adjustment. Problems occur when metallic objects, e.g., a prosthesis or a screw, are in the absorption area of interest. In this case, the automatic adjustment mostly fails because the dark, metallic objects lead the algorithm to overdose the x-ray tube. This outshining effect results in overexposed images and bad contrast. To overcome this limitation, metallic objects have to be detected and extracted from images that are taken as input for the adjustment algorithm.In this paper, we present a real-time solution for extracting metallic objects of x-ray images. We will explore the characteristic features of metallic objects in x-ray images and their distinction from bone fragments which form the basis to find a successful way for object segmentation and classification. Subsequently, we will present our edge based real-time approach for successful and fast automatic segmentation and classification of metallic objects. Finally, experimental results on the effectiveness and performance of our approach based on a vast amount of input image data sets will be presented.}, isbn13 = {9780819464231}, keywords = {Pattern recognition, Segmentation, Medical imaging, X-Ray, Artefact-Segmentation}, language = {EN}, pdf = {https://www.itec.aau.at/bib/files/Realtime automatic metal extraction of medical x-ray images for contrasst improvement.pdf}, talktype = {none} }