Abstract : In this paper, we propose a new strategy for near-duplicate video retrieval that is based on shot aggregation. We investigate different methods for shot aggregation with the main objective to solve the difficult trade-off between performance, scalability and speed. The proposed short aggregation is based on two steps. The first step consists of keyframes selection. And the second one is the aggregation of the keyframes per shot. The aggregation is performed by applying Fisher vector on the descriptors computed on the selected keyframes. We demonstrate that the scalability and the speed are tackled by a sparse video analysis approach (i.e. extracting only few keyframes) combined with shot aggregation, while the performance is discussed around the choice of the aggregation strategy. The performance is evaluated on the CC_WEB_VIDEO dataset that is designed for the near-duplicate video retrieval assessment and for which some experiments have been conducted by different authors.
https://hal.inria.fr/hal-01164350
Contributor : Alexey Ozerov <>
Submitted on : Tuesday, June 16, 2015 - 4:24:09 PM Last modification on : Thursday, June 18, 2015 - 1:07:36 AM Long-term archiving on: : Tuesday, April 25, 2017 - 11:12:21 AM
Vignesh Srinivasan, Frederic Lefebvre, Alexey Ozerov. Shot aggregating strategy for near-duplicate video retrieval. 23rd European Signal Processing Conference (EUSIPCO 2015), Aug 2015, Nice, France. ⟨hal-01164350⟩