This paper presents a novel retrieval pipeline for video collections, which aims to retrieve the most significant parts of an edited video for a given query, and represent them with thumbnails which are at the same time semantically meaningful and aesthetically remarkable. Videos are first segmented into coherent and story-telling scenes, then a retrieval algorithm based on deep learning is proposed to retrieve the most significant scenes for a textual query. A ranking strategy based on deep features is finally used to tackle the problem of visualizing the best thumbnail. Qualitative and quantitative experiments are conducted on a collection of edited videos to demonstrate the effectiveness of our approach.
Scene-driven Retrieval in Edited Videos using Aesthetic and Semantic Deep Features / Baraldi, Lorenzo; Grana, Costantino; Cucchiara, Rita. - (2016), pp. 23-29. (Intervento presentato al convegno 6th ACM on International Conference on Multimedia Retrieval tenutosi a New York, USA nel 6-9 Giugno 2016) [10.1145/2911996.2912012].
Scene-driven Retrieval in Edited Videos using Aesthetic and Semantic Deep Features
BARALDI, LORENZO;GRANA, Costantino;CUCCHIARA, Rita
2016
Abstract
This paper presents a novel retrieval pipeline for video collections, which aims to retrieve the most significant parts of an edited video for a given query, and represent them with thumbnails which are at the same time semantically meaningful and aesthetically remarkable. Videos are first segmented into coherent and story-telling scenes, then a retrieval algorithm based on deep learning is proposed to retrieve the most significant scenes for a textual query. A ranking strategy based on deep features is finally used to tackle the problem of visualizing the best thumbnail. Qualitative and quantitative experiments are conducted on a collection of edited videos to demonstrate the effectiveness of our approach.File | Dimensione | Formato | |
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