Matches in SemOpenAlex for { <https://semopenalex.org/work/W2275440385> ?p ?o ?g. }
Showing items 1 to 63 of
63
with 100 items per page.
- W2275440385 abstract "With the improved accessibility to an exploding amount of video data and growing demand in a wide range of video analysis applications, videobased action recognition becomes an increasingly important task in computer vision. Unlike most approaches in the literature which rely on bagof-feature methods that typically ignore the structural information in the data, in this monograph we incorporate the spatial relationship and the time stamps in the data in the recognition and classification processes. We capture the spatial relationships in the subject performing the action by representing the actor’s shape in each frame with a graph. This graph is then transformed into a vector of real numbers by means of prototypebased graph embedding. Finally, the temporal structure between these vectors is captured by means of sequential classifiers. The experimental results on a well-known action dataset (KTH) show that, although the proposed method does not achieve accuracy comparable to that of the best existing approaches, these embedded graphs are capable of describing the deformable human shape and its evolution over time. We later propose an extended hidden Markov model, called the hidden Markov model for multiple, irregular observations (HMM-MIO), capable of fusing spatial information provided by graph embedding and the textural information of STIP descriptors. Experimental results show that recognition accuracy can be significantly improved by combining the spatiotemporal features with the structural information obtaining higher accuracy than from either separately. Furthermore, HMM-MIO is applied to the task of joint action segmentation and classification over a concatenated version of the KTH action dataset and the challenging CMU multi-modal activity dataset. The achieved accuracies proved comparable to or higher than state-of-the-art approaches and show the usefulness of the proposed model also for this task. The next and most remarkable contribution of this dissertation is the creation of a novel framework for selecting a set of prototypes from a labelled graph set taking class discrimination into account. Experimental results show that such a discriminative prototype selection framework can achieve superior results, not only for the task of human action recognition, but also in the classification of various structured data such as letters, digits, drawings, fingerprints compared to other well-established prototype selection approaches. Lastly, we change our focus from the forementioned problems to the recognition of complex event, which is a recent area of computer vision expanding the traditional boundaries of visual recognition. For this task, we have employed the notion of concept as an alternative intermediate representation with the aim of improving event recognition. We model an event by a hidden conditional random field and we learn its parameters by a latent structural SVM approach. Experimental results over video clips from the challenging TRECVID MED 2011 and MED 2012 datasets show that the proposed approach achieves a significant improvement in average precision at a parity of features and concepts." @default.
- W2275440385 created "2016-06-24" @default.
- W2275440385 creator A5017184564 @default.
- W2275440385 date "2014-01-01" @default.
- W2275440385 modified "2023-09-23" @default.
- W2275440385 title "Action recognition by graph embedding and temporal classifiers" @default.
- W2275440385 hasPublicationYear "2014" @default.
- W2275440385 type Work @default.
- W2275440385 sameAs 2275440385 @default.
- W2275440385 citedByCount "0" @default.
- W2275440385 crossrefType "dissertation" @default.
- W2275440385 hasAuthorship W2275440385A5017184564 @default.
- W2275440385 hasConcept C119857082 @default.
- W2275440385 hasConcept C132525143 @default.
- W2275440385 hasConcept C153180895 @default.
- W2275440385 hasConcept C154945302 @default.
- W2275440385 hasConcept C23224414 @default.
- W2275440385 hasConcept C2777212361 @default.
- W2275440385 hasConcept C2987834672 @default.
- W2275440385 hasConcept C41008148 @default.
- W2275440385 hasConcept C41608201 @default.
- W2275440385 hasConcept C80444323 @default.
- W2275440385 hasConcept C83665646 @default.
- W2275440385 hasConcept C89600930 @default.
- W2275440385 hasConceptScore W2275440385C119857082 @default.
- W2275440385 hasConceptScore W2275440385C132525143 @default.
- W2275440385 hasConceptScore W2275440385C153180895 @default.
- W2275440385 hasConceptScore W2275440385C154945302 @default.
- W2275440385 hasConceptScore W2275440385C23224414 @default.
- W2275440385 hasConceptScore W2275440385C2777212361 @default.
- W2275440385 hasConceptScore W2275440385C2987834672 @default.
- W2275440385 hasConceptScore W2275440385C41008148 @default.
- W2275440385 hasConceptScore W2275440385C41608201 @default.
- W2275440385 hasConceptScore W2275440385C80444323 @default.
- W2275440385 hasConceptScore W2275440385C83665646 @default.
- W2275440385 hasConceptScore W2275440385C89600930 @default.
- W2275440385 hasLocation W22754403851 @default.
- W2275440385 hasOpenAccess W2275440385 @default.
- W2275440385 hasPrimaryLocation W22754403851 @default.
- W2275440385 hasRelatedWork W2510689432 @default.
- W2275440385 hasRelatedWork W2742824650 @default.
- W2275440385 hasRelatedWork W2773093257 @default.
- W2275440385 hasRelatedWork W2798583270 @default.
- W2275440385 hasRelatedWork W2885380930 @default.
- W2275440385 hasRelatedWork W2886450608 @default.
- W2275440385 hasRelatedWork W2903325433 @default.
- W2275440385 hasRelatedWork W2913261659 @default.
- W2275440385 hasRelatedWork W2953571885 @default.
- W2275440385 hasRelatedWork W2966467690 @default.
- W2275440385 hasRelatedWork W2999400954 @default.
- W2275440385 hasRelatedWork W3010739957 @default.
- W2275440385 hasRelatedWork W3012058546 @default.
- W2275440385 hasRelatedWork W3039784357 @default.
- W2275440385 hasRelatedWork W3046006117 @default.
- W2275440385 hasRelatedWork W3047774176 @default.
- W2275440385 hasRelatedWork W3047849955 @default.
- W2275440385 hasRelatedWork W3097161036 @default.
- W2275440385 hasRelatedWork W3099938251 @default.
- W2275440385 hasRelatedWork W3131772491 @default.
- W2275440385 isParatext "false" @default.
- W2275440385 isRetracted "false" @default.
- W2275440385 magId "2275440385" @default.
- W2275440385 workType "dissertation" @default.