de
en
Schliessen
Detailsuche
Bibliotheken
Projekt
Impressum
Datenschutz
zum Inhalt
Detailsuche
Schnellsuche:
OK
Ergebnisliste
Titel
Titel
Inhalt
Inhalt
Seite
Seite
Im Dokument suchen
Hosseini, Babak: Interpretable analysis of motion data. 2021
Inhalt
Contents
Introduction
Foundations
Motion Data Representation
Formulating Motion Analysis Problems
Measuring Motions Similarity by DTW
Benchmark Motion Datasets
Motion Data Analysis Literature
Metric Learning for Motion Analysis
State of The Art
Distance-based Metric Learning
Feasibility based Large Margin Nearest Neighbors
Metric regularization
Experiments
Conclusion
Sparse coding for Interpretable Embedding of Motion Data
State of The Art
Non-negative Kernel Sparse Coding
Confidence based kernel Sparse Coding
Motion Clustering using Non-negative Kernel Sparse Coding
Experiments
Conclusion
Multiple Kernel Learning for Motion Analysis
State of The Art
Large-Margin Multiple Kernel Learning for Discriminative Feature Selection
Interpretable Multiple-Kernel Prototype Learning
Multiple-Kernel Dictionary Structure
Experiments
Conclusion
Interpretable Motion Analysis with Convolutional Neural Network
State of The Art
Alignment Kernels for CNN
Deep-Aligned CNN
Experiments
Conclusions
Conclusions and Outlook
Publications in the Context of this Thesis
References
Appendix
Proof of Theorem 3.1
Proof of Lemma 3.1
Additional Figures for Section 3.5
Proof of Proposition 4.1
The K-NNLS Algorithm
Proof of Proposition 4.2
Proof of Proposition 4.3
Proof of Proposition 4.4
Proof of Proposition 4.5
Proof of Theorem 4.1
Proof of Proposition 5.1
Proof of Proposition 5.2
Proof of Theorem 5.1
Complete Architecture of DACNN from Section 6.3