We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Video Scene Detection Using Compact Bag of Visual Word Models.
- Authors
Haroon, Muhammad; Baber, Junaid; Ullah, Ihsan; Daudpota, Sher Muhammad; Bakhtyar, Maheen; Devi, Varsha
- Abstract
Video segmentation into shots is the first step for video indexing and searching. Videos shots are mostly very small in duration and do not give meaningful insight of the visual contents. However, grouping of shots based on similar visual contents gives a better understanding of the video scene; grouping of similar shots is known as scene boundary detection or video segmentation into scenes. In this paper, we propose a model for video segmentation into visual scenes using bag of visual word (BoVW) model. Initially, the video is divided into the shots which are later represented by a set of key frames. Key frames are further represented by BoVW feature vectors which are quite short and compact compared to classical BoVW model implementations. Two variations of BoVW model are used: (1) classical BoVW model and (2) Vector of Linearly Aggregated Descriptors (VLAD) which is an extension of classical BoVW model. The similarity of the shots is computed by the distances between their key frames feature vectors within the sliding window of length L, rather comparing each shot with very long lists of shots which has been previously practiced, and the value of L is 4. Experiments on cinematic and drama videos show the effectiveness of our proposed framework. The BoVW is 25000-dimensional vector and VLAD is only 2048-dimensional vector in the proposed model. The BoVW achieves 0.90 segmentation accuracy, whereas VLAD achieves 0.83.
- Subjects
VIDEO compression; IMAGE segmentation; FEATURE extraction; SUPPORT vector machines; SCALE invariance (Statistical physics)
- Publication
Advances in Multimedia, 2018, p1
- ISSN
1687-5680
- Publication type
Academic Journal
- DOI
10.1155/2018/2564963