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Author (up) Hamed H. Aghdam; Abel Gonzalez-Garcia; Joost Van de Weijer; Antonio Lopez edit   pdf
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Title Active Learning for Deep Detection Neural Networks Type Conference Article
Year 2019 Publication 18th IEEE International Conference on Computer Vision Abbreviated Journal  
Volume Issue Pages 3672-3680  
Keywords  
Abstract The cost of drawing object bounding boxes (ie labeling) for millions of images is prohibitively high. For instance, labeling pedestrians in a regular urban image could take 35 seconds on average. Active learning aims to reduce the cost of labeling by selecting only those images that are informative to improve the detection network accuracy. In this paper, we propose a method to perform active learning of object detectors based on convolutional neural networks. We propose a new image-level scoring process to rank unlabeled images for their automatic selection, which clearly outperforms classical scores. The proposed method can be applied to videos and sets of still images. In the former case, temporal selection rules can complement our scoring process. As a relevant use case, we extensively study the performance of our method on the task of pedestrian detection. Overall, the experiments show that the proposed method performs better than random selection.  
Address Seul; Korea; October 2019  
Corporate Author Thesis  
Publisher Place of Publication Editor  
Language Summary Language Original Title  
Series Editor Series Title Abbreviated Series Title  
Series Volume Series Issue Edition  
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Area Expedition Conference ICCV  
Notes ADAS; LAMP; 600.124; 600.109; 600.141; 600.120; 600.118;CIC Approved no  
Call Number Admin @ si @ AGW2019 Serial 3321  
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