Seguir
Santosh Kumar Vipparthi
Santosh Kumar Vipparthi
Indian Institute of Technology Ropar (IIT Ropar),IIT Guwahati and MNIT
Dirección de correo verificada de iitrpr.ac.in - Página principal
Título
Citado por
Citado por
Año
LEARNet: Dynamic imaging network for micro expression recognition
M Verma, SK Vipparthi, G Singh, S Murala
IEEE Transactions on Image Processing 29, 1618-1627, 2019
1242019
An empirical review of deep learning frameworks for change detection: Model design, experimental frameworks, challenges and research needs
M Mandal, SK Vipparthi
IEEE Transactions on Intelligent Transportation Systems 23 (7), 6101-6122, 2021
832021
Color directional local quinary patterns for content based indexing and retrieval
SK Vipparthi, SK Nagar
Human-centric Computing and Information Sciences 4, 1-13, 2014
692014
AVDNet: A small-sized vehicle detection network for aerial visual data
M Mandal, M Shah, P Meena, S Devi, SK Vipparthi
IEEE Geoscience and Remote Sensing Letters 17 (3), 494-498, 2019
622019
Local Gabor maximum edge position octal patterns for image retrieval
SK Vipparthi, S Murala, SK Nagar, AB Gonde
Neurocomputing 167, 336-345, 2015
582015
BerConvoNet: A deep learning framework for fake news classification
M Choudhary, SS Chouhan, ES Pilli, SK Vipparthi
Applied Soft Computing 110, 107614, 2021
572021
3DCD: Scene independent end-to-end spatiotemporal feature learning framework for change detection in unseen videos
M Mandal, V Dhar, A Mishra, SK Vipparthi, M Abdel-Mottaleb
IEEE Transactions on Image Processing 30, 546-558, 2020
542020
Local directional mask maximum edge patterns for image retrieval and face recognition
SK Vipparthi, S Murala, AB Gonde, QMJ Wu
IET Computer Vision 10 (3), 182-192, 2016
522016
Mor-uav: A benchmark dataset and baselines for moving object recognition in uav videos
M Mandal, LK Kumar, SK Vipparthi
Proceedings of the 28th ACM international conference on multimedia, 2626-2635, 2020
512020
Expert image retrieval system using directional local motif XoR patterns
SK Vipparthi, SK Nagar
Expert Systems with Applications 41 (17), 8016-8026, 2014
502014
Regional adaptive affinitive patterns (RADAP) with logical operators for facial expression recognition
M Mandal, M Verma, S Mathur, SK Vipparthi, S Murala, D Kranthi Kumar
IET Image Processing 13 (5), 850-861, 2019
472019
Scene independency matters: An empirical study of scene dependent and scene independent evaluation for CNN-based change detection
M Mandal, SK Vipparthi
IEEE Transactions on Intelligent Transportation Systems 23 (3), 2031-2044, 2020
432020
Hinet: Hybrid inherited feature learning network for facial expression recognition
M Verma, SK Vipparthi, G Singh
IEEE Letters of the Computer Society 2 (4), 36-39, 2019
432019
SSSDET: Simple short and shallow network for resource efficient vehicle detection in aerial scenes
M Mandal, M Shah, P Meena, SK Vipparthi
2019 IEEE international conference on image processing (ICIP), 3098-3102, 2019
372019
Challenges in time-stamp aware anomaly detection in traffic videos
KM Biradar, A Gupta, M Mandal, SK Vipparthi
arXiv preprint arXiv:1906.04574, 2019
352019
Multi-joint histogram based modelling for image indexing and retrieval
SK Vipparthi, SK Nagar
Computers & Electrical Engineering 40 (8), 163-173, 2014
352014
3DFR: A swift 3D feature reductionist framework for scene independent change detection
M Mandal, V Dhar, A Mishra, SK Vipparthi
IEEE Signal Processing Letters 26 (12), 1882-1886, 2019
342019
Directional local ternary patterns for multimedia image indexing and retrieval
SK Vipparthi, SK Nagar
International Journal of Signal and Imaging Systems Engineering 8 (3), 137-145, 2015
332015
MotionRec: A unified deep framework for moving object recognition
M Mandal, LK Kumar, MS Saran
Proceedings of the IEEE/CVF Winter Conference on Applications of Computer …, 2020
312020
NTIRE 2023 image shadow removal challenge report
FA Vasluianu, T Seizinger, R Timofte, S Cui, J Huang, S Tian, M Fan, ...
Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern …, 2023
302023
El sistema no puede realizar la operación en estos momentos. Inténtalo de nuevo más tarde.
Artículos 1–20