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Áron Fóthi
Áron Fóthi
ELTE Eötvös Loránd University
Adresse e-mail validée de inf.elte.hu
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Fine-tuning deep CNN models on specific MS COCO categories
D Sonntag, M Barz, J Zacharias, S Stauden, V Rahmani, Á Fóthi, ...
arXiv preprint arXiv:1709.01476, 2017
112017
Towards reasoning based representations: Deep consistence seeking machine
A Lőrincz, M Csákvári, Á Fóthi, ZÁ Milacski, A Sárkány, Z Tősér
Cognitive Systems Research 47, 92-108, 2018
92018
RATS: Robust Automated Tracking and Segmentation of Similar Instances
L Kopácsi, Á Dobolyi, Á Fóthi, D Keller, V Varga, A Lőrincz
International Conference on Artificial Neural Networks, 507-518, 2021
42021
Multi object tracking for similar instances: a hybrid architecture
Á Fóthi, KB Faragó, L Kopácsi, ZÁ Milacski, V Varga, A Lőrincz
Neural Information Processing: 27th International Conference, ICONIP 2020 …, 2020
42020
Cognitive deep machine can train itself
A Lőrincz, M Csákvári, Á Fóthi, ZÁ Milacski, A Sárkány, Z Tősér
arXiv preprint arXiv:1612.00745, 2016
32016
Declarative description: The meeting point of artificial intelligence deep neural networks and human intelligence
Z Milacski, K Faragó, A Fóthi, V Varga, A Lorincz
XAI 2018, Proceedings of the 2nd Workshop on Explainable Artificial …, 2018
22018
Adversarial perturbation stability of the layered group basis pursuit
D Szeghy, ZA Milacski, A Fóthi, A Lorincz
def 1, 2, 2021
12021
Skeletonization Combined with Deep Neural Networks for Superpixel Temporal Propagation
Á Fodor, Á Fóthi, L Kopácsi, E Somfai, A Lőrincz
2019 International Joint Conference on Neural Networks (IJCNN), 1-7, 2019
12019
Deep Gestalt Reasoning Model: Interpreting Electrophysiological Signals Related to Cognition
A Lorincz, Á Fóthi, BO Rahman, V Varga
Proceedings of the IEEE International Conference on Computer Vision …, 2017
12017
Cluster2Former: Semisupervised Clustering Transformers for Video Instance Segmentation
Á Fóthi, A Szlatincsán, E Somfai
Sensors 24 (3), 997, 2024
2024
Structural Extensions of Basis Pursuit: Guarantees on Adversarial Robustness
D Szeghy, M Aslan, Á Fóthi, B Mészáros, ZÁ Milacski, A Lőrincz
arXiv preprint arXiv:2205.08955, 2022
2022
Common Fate Based Episodic Segmentation by Combining Supervoxels with Deep Neural Networks
L Kopácsi, Á Fóthi, Á Fodor, E Somfai, A Lőrincz
2019 International Joint Conference on Neural Networks (IJCNN), 1-7, 2019
2019
A Layered Group Basis Pursuit támadásokkal szembeni stabilitásának vizsgálata
D Szeghy, ZÁ Milacski, Á Fóthi, A Lőrincz
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