Multimodal Video Summarization based on Fuzzy Similarity Features
Ημερομηνία
2022Γλώσσα
en
Λέξη-κλειδί
Επιτομή
The continuously growing number of user-generated videos has increased the need for efficient browsing through content collections and repositories, which in turn requires descriptive, yet compact representations. To this goal, a popular approach is to create a visual summary, which is by far more expressive compared to other approaches, e.g., textual descriptions. In this work, we present a video summarization approach that is based on the extraction and fusion of audio and visual features, in order to produce dynamic video summaries, i.e., comprising of the most important video segments of the original video, while preserving their temporal order. Based on the extracted features, each segment is classified as 'interesting,' or 'uninteresting,' thus included in the final summary, or not. The novelty of our approach is that prior to classification, the fused features are fuzzified, thus becoming more intuitive and robust to uncertainty. We evaluate our approach using a large dataset of user-generated videos and demonstrate that fuzzy features are able to boost classification performance, providing for more concrete video summaries. © 2022 IEEE.
Collections
Related items
Showing items related by title, author, creator and subject.
-
Κατάτμηση σε Tiles και αποδοτικότητα κωδικοποίησης video: οι περιπτώσεις των προτύπων HEVC και AV1
Πανάγου, Ναταλία (2019) -
Υλοποίηση του avs video standard σε έναν massively parallel πολυεπεξεργαστή
Παπαπέτρου-Λαμπράκη, Νεφέλη Α. (2010) -
Μελέτη του προτύπου video με την ονομασία "Scalable video coding"
Τσουμπλέκας, Γεώργιος (2010)