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Kiyosumi Kidono
Kiyosumi Kidono
Verified email at mosk.tytlabs.co.jp
Title
Cited by
Cited by
Year
Pedestrian recognition using high-definition LIDAR
K Kidono, T Miyasaka, A Watanabe, T Naito, J Miura
2011 IEEE Intelligent Vehicles Symposium (IV), 405-410, 2011
2602011
Autonomous visual navigation of a mobile robot using a human-guided experience
K Kidono, J Miura, Y Shirai
Robotics and Autonomous Systems 40 (2-3), 121-130, 2002
1662002
Experimental on hierarchical transmission scheme for visible light communication using LED traffic light and high-speed camera
S Arai, S Mase, T Yamazato, T Endo, T Fujii, M Tanimoto, K Kidono, ...
2007 IEEE 66th Vehicular Technology Conference, 2174-2178, 2007
1302007
Real-time lane estimation using deep features and extra trees regression
V John, Z Liu, C Guo, S Mita, K Kidono
Image and Video Technology: 7th Pacific-Rim Symposium, PSIVT 2015, Auckland …, 2016
1072016
A low-cost solution for automatic lane-level map generation using conventional in-car sensors
C Guo, K Kidono, J Meguro, Y Kojima, M Ogawa, T Naito
IEEE Transactions on Intelligent Transportation Systems 17 (8), 2355-2366, 2016
732016
Color-image reproduction apparatus
K Kidono, Y Ninomiya
US Patent App. 11/649,359, 2007
602007
Pedestrian detection and direction estimation by cascade detector with multi-classifiers utilizing feature interaction descriptor
K Goto, K Kidono, Y Kimura, T Naito
2011 IEEE Intelligent Vehicles Symposium (IV), 224-229, 2011
462011
Real-time road surface and semantic lane estimation using deep features
V John, Z Liu, S Mita, C Guo, K Kidono
Signal, Image and Video Processing 12, 1133-1140, 2018
362018
Information processing device, computer readable storage medium, and map data updating system
K Goto, K Yamaguchi, K Kidono, J Meguro
US Patent 9,891,057, 2018
352018
Reliable pedestrian recognition combining high-definition lidar and vision data
K Kidono, T Naito, J Miura
2012 15th international IEEE conference on intelligent transportation …, 2012
292012
Visibility estimation under night-time conditions using a multiband camera
K Kidono, Y Ninomiya
2007 IEEE Intelligent Vehicles Symposium, 1013-1018, 2007
282007
Free space, visible and missing lane marker estimation using the PsiNet and extra trees regression
V John, NM Karunakaran, C Guo, K Kidono, S Mita
2018 24th International Conference on Pattern Recognition (ICPR), 189-194, 2018
202018
Fast road scene segmentation using deep learning and scene-based models
V John, K Kidono, C Guo, H Tehrani, S Mita, K Ishimaru
2016 23rd International Conference on Pattern Recognition (ICPR), 3763-3768, 2016
192016
Toward human-like behavior generation in urban environment based on Markov decision process with hybrid potential maps
C Guo, K Kidono, R Terashima, Y Kojima
2018 IEEE Intelligent Vehicles Symposium (IV), 2209-2215, 2018
172018
Humanlike behavior generation in urban environment based on learning-based potentials with a low-cost lane graph
C Guo, K Kidono, R Terashima, Y Kojima
IEEE Transactions on Intelligent Vehicles 3 (1), 46-60, 2017
172017
Human-like behavior generation for intelligent vehicles in urban environment based on a hybrid potential map
C Guo, K Kidono, T Machida, R Terashima, Y Kojima
2017 IEEE Intelligent Vehicles Symposium (IV), 197-203, 2017
172017
Multiband image segmentation and object recognition using texture filter banks
Y Kang, K Kidono, T Naito, Y Ninomiya
2008 19th International Conference on Pattern Recognition, 1-4, 2008
172008
Improved lane detection based on past vehicle trajectories
C Guo, J Meguro, K Yamaguchi, K Kidono, Y Kojima
17th International IEEE Conference on Intelligent Transportation Systems …, 2014
142014
Learning-based trajectory generation for intelligent vehicles in urban environment
C Guo, K Kidono, M Ogawa
2016 ieee intelligent vehicles symposium (iv), 1236-1241, 2016
122016
Road ortho-image generation based on accurate vehicle trajectory estimation by GPS Doppler
J Meguro, H Ishida, K Kidono, Y Kojima
2012 IEEE Intelligent Vehicles Symposium, 276-281, 2012
102012
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