Følg
Sofia Broomé
Sofia Broomé
Computer vision researcher @Sleip AI. Previously at Therapanacea, KTH
Verificeret mail på kth.se - Startside
Titel
Citeret af
Citeret af
År
Improving gait classification in horses by using inertial measurement unit (IMU) generated data and machine learning
FM Serra Bragança, S Broomé, M Rhodin, S Björnsdóttir, V Gunnarsson, ...
Scientific reports 10 (1), 17785, 2020
492020
Towards machine recognition of facial expressions of pain in horses
PH Andersen, S Broomé, M Rashid, J Lundblad, K Ask, Z Li, E Hernlund, ...
Animals 11 (6), 1643, 2021
482021
Going deeper than tracking: a survey of computer-vision based recognition of animal pain and affective states
S Broomé, M Feighelstein, A Zamansky, GC Lencioni, PH Andersen, ...
International Journal of Computer Vision, 2022
46*2022
Interpreting video features: a comparison of 3D convolutional networks and convolutional LSTM networks
J Mänttäri, S Broomé, J Folkesson, H Kjellström
Computer Vision - ACCV 2020, 15th Asian Conference on Computer Vision, 2020
372020
Dynamics are Important for the Recognition of Equine Pain in Video
S Broomé, KB Gleerup, PH Andersen, H Kjellström
IEEE Conference on Computer Vision and Pattern Recognition, 2019
342019
hSMAL: Detailed horse shape and pose reconstruction for motion pattern recognition
C Li, N Ghorbani, S Broomé, M Rashid, MJ Black, E Hernlund, ...
CVPR Workshop on Computer Vision for Animal Behavior Tracking and Modeling, 2021
232021
Sharing pain: Using pain domain transfer for video recognition of low grade orthopedic pain in horses
S Broomé, K Ask, M Rashid-Engström, P Haubro Andersen, H Kjellström
PloS one 17 (3), e0263854, 2022
19*2022
Can a Machine Learn to See Horse Pain? An Interdisciplinary Approach Towards Automated Decoding of Facial Expressions of Pain in the Horse
PH Andersen, KB Gleerup, J Wathan, B Coles, H Kjellström, S Broomé, ...
Measuring Behavior 2018, 2018
162018
Recur, attend or convolve? On whether temporal modeling matters for cross-domain robustness in action recognition
S Broomé, E Pokropek, B Li, H Kjellström
Proceedings of the IEEE/CVF Winter Conference on Applications of Computer …, 2023
132023
Equine Pain Behavior Classification via Self-Supervised Disentangled Pose Representation
M Rashid, S Broomé, K Ask, E Hernlund, PH Andersen, H Kjellström, ...
IEEE Winter Conference on Applications of Computer Vision, 2022
122022
What should I annotate? An automatic tool for finding video segments for EquiFACS annotation
M Rashid, S Broome, PH Andersen, KB Gleerup, YJ Lee
Measuring Behavior, 2018
102018
Automated detection of equine facial action units
Z Li, S Broomé, PH Andersen, H Kjellström
arXiv preprint arXiv:2102.08983, 2021
92021
Towards Machine Recognition of Facial Expressions of Pain in Horses. Animals. 2021; 11: 1643
PH Andersen, S Broomé, M Rashid, J Lundblad, K Ask, Z Li, E Hernlund, ...
s Note: MDPI stays neutral with regard to jurisdictional claims in published …, 2021
32021
Objectively recognizing human activity in body-worn sensor data with (more or less) deep neural networks
S Broomé
Robotics, Perception and Learning; KTH Royal Institute of Technology, 2017
22017
A PDE Perspective on Climate Modeling
S Broomé, J Ridenour
Department of Mathematics, KTH Royal Institute of Technology, 2014
22014
Predictive Modeling of Equine Activity Budgets Using a 3D Skeleton Reconstructed from Surveillance Recordings
E Pokropek, S Broomé, PH Andersen, H Kjellström
CVPR Workshop on Computer Vision for Animal Behavior Tracking and Modeling, 2023
12023
Learning Spatiotemporal Features in Low-Data and Fine-Grained Action Recognition with an Application to Equine Pain Behavior
S Broomé
KTH Royal Institute of Technology, 2022
2022
[Re] Unsupervised Scalable Representation Learning for Multivariate Time Series
F Liljefors, MM Sorkhei, S Broomé
ReScience C 6 (NeurIPS 2019 Reproducibility Challenge), 2020
2020
Systemet kan ikke foretage handlingen nu. Prøv igen senere.
Artikler 1–18