Title :
Large Margin Dimensionality Reduction for Action Similarity Labeling
Author :
Xiaojiang Peng ; Yu Qiao ; Qiang Peng ; Qionghua Wang
Author_Institution :
Sch. of Inf. Sci. & Technol., Southwest Jiaotong Univ., Chengdu, China
Abstract :
Action recognition in videos is receiving extensive research interest due to its wide applications. This task needs to assign a specific action class for each video. In this paper, we study the problem of action similarity labeling (ASLAN) that is to verify whether two action videos present the same type of action or not. We show that both Fisher vector (FV) and vector of locally aggregated descriptors (VLAD) with dense trajectory features can achieve state-of-the-art performance on the ASLAN benchmark. Our main contribution is to develop a large margin dimensionality reduction (LMDR) method to compress high-dimensional FV and VLAD. Specially, we leverage the hinge loss objective function and stochastic gradient descent to optimize the discriminative projection matrix of these vectors. Extensive experiments on the ASLAN dataset indicate that our LMDR method not only reduces the dimension significantly but also improves the verification performance.
Keywords :
gradient methods; image recognition; matrix algebra; video signal processing; ASLAN benchmark; Fisher vector; LMDR method; VLAD; action recognition; action similarity labeling; action videos; dense trajectory features; discriminative projection matrix; high-dimensional FV; hinge loss objective function; large margin dimensionality reduction method; stochastic gradient descent; vector of locally aggregated descriptors; verification performance improvement; Educational institutions; Labeling; Measurement; Principal component analysis; Trajectory; Vectors; Videos; Action similarity labeling; Fisher vector; VLAD; large margin dimensionality reduction; similarity learning;
Journal_Title :
Signal Processing Letters, IEEE
DOI :
10.1109/LSP.2014.2320530