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authorAdam Harvey <adam@ahprojects.com>2019-02-19 23:14:02 +0100
committerAdam Harvey <adam@ahprojects.com>2019-02-19 23:14:02 +0100
commit2c469720811145abb07e5e59281f917eb8b1cc67 (patch)
tree5651671371b44929e464e6ec671856f1e84d5200 /site/datasets/citations/precarious.json
parentfe0dee2f8c8a7127d1ac2f01c5989f5011a2ee8a (diff)
parent768757fe47d55b62c1d3ef87c982332e0292393e (diff)
..
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+{"id": "9e5378e7b336c89735d3bb15cf67eff96f86d39a", "paper": {"paperId": "9e5378e7b336c89735d3bb15cf67eff96f86d39a", "key": "precarious", "title": "Expecting the Unexpected: Training Detectors for Unusual Pedestrians with Adversarial Imposters", "journal": "2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR)", "address": "", "address_type": "", "lat": "", "lng": "", "pdf_link": "https://arxiv.org/pdf/1703.06283.pdf", "report_link": "papers/9e5378e7b336c89735d3bb15cf67eff96f86d39a.html", "citation_count": 12, "citations_geocoded": 3, "citations_unknown": 9, "citations_empty": 1, "citations_pdf": 10, "citations_doi": 1, "name": "Precarious"}, "address": null, "citations": [["Joint Holistic and Partial CNN for Pedestrian Detection", "", "China", "China", "China", "35.86166000", "104.19539700", "edu", "", "2018"], ["Modeling Camera Effects to Improve Visual Learning from Synthetic Data", "", "University of Michigan", "University of Michigan", "University of Michigan, 500, Hayward Street, Ann Arbor, Washtenaw County, Michigan, 48109, USA", "42.29421420", "-83.71003894", "edu", "", "2018"], ["Synthesizing a Scene-Specific Pedestrian Detector and Pose Estimator for Static Video Surveillance", "Volvo Construction Equipment, G\u00f6thenburg, Sweden", "Volvo Construction Equipment, G\u00f6thenburg, Sweden", "Volvo Construction Equipment, G\u00f6thenburg, Sweden", "Gropeg\u00e5rdsgatan 11, 417 15 G\u00f6teborg, Sweden", "57.71720040", "11.92185580", "edu", "", "2018"]]} \ No newline at end of file