Cross-Pose Face Recognition — A Virtual View Generation Approach Using Clustering Based LVTM
スポンサーリンク
概要
- 論文の詳細を見る
This paper presents an approach for cross-pose face recognition by virtual view generation using an appearance clustering based local view transition model. Previously, the traditional global pattern based view transition model (VTM) method was extended to its local version called LVTM, which learns the linear transformation of pixel values between frontal and non-frontal image pairs from training images using partial image in a small region for each location, instead of transforming the entire image pattern. In this paper, we show that the accuracy of the appearance transition model and the recognition rate can be further improved by better exploiting the inherent linear relationship between frontal-nonfrontal face image patch pairs. This is achieved based on the observation that variations in appearance caused by pose are closely related to the corresponding 3D structure and intuitively frontal-nonfrontal patch pairs from more similar local 3D face structures should have a stronger linear relationship. Thus for each specific location, instead of learning a common transformation as in the LVTM, the corresponding local patches are first clustered based on an appearance similarity distance metric and then the transition models are learned separately for each cluster. In the testing stage, each local patch for the input non-frontal probe image is transformed using the learned local view transition model corresponding to the most visually similar cluster. The experimental results on a real-world face dataset demonstrated the superiority of the proposed method in terms of recognition rate.
著者
-
MURASE Hiroshi
Graduate School of Information Science, Nagoya University
-
Murase Hiroshi
Graduate School Of Information Science Nagoya University
-
LI Xi
Graduate School of Information Science, Nagoya University
-
Ide Ichiro
Graduate School Of Information Science Nagoya University
-
Takahashi Tomokazu
Graduate School Of Information Science Nagoya University:faculty Of Economics And Information Gifu Shotoku Gakuen University
-
LI Xi
Graduate School of Agriculture, Hokkaido University
-
DEGUCHI Daisuke
Information and Communications Headquarters, Nagoya University
関連論文
- Combining Three Different Types of Local Features for Generic Object Recognition(International Session 1)
- Generation of Training Data by Degradation Models for Traffic Sign Symbol Recognition(Image Recognition and Understanding)
- Appearance Manifold with Covariance Matrix for 3-D Object Recognition(CV)
- THREE-DIMENSIONAL PARALLEL IMAGE PROCESSING LIBRARY(International Workshop on Advanced Image Technology 2007)
- Microsatellite markers reveal high allelic variation in natural populations of Cryptomeria japonica near refugial areas of the last glacial period
- Face recognition based on virtual frontal view generation using LVTM with local patches clustering (パターン認識・メディア理解)
- Face recognition based on virtual frontal view generation using LVTM with local patches clustering
- Efficient Tracking of News Topics Based on Chronological Semantic Structures in a Large-Scale News Video Archive
- Face recognition based on virtual frontal view generation using LVTM with local patches clustering
- Cross-Pose Face Recognition — A Virtual View Generation Approach Using Clustering Based LVTM
- P23-13 Evaluating spatial and temporal variation in global warming potential (GWP) at a regional scale in Ikushunbetsu river watershed, Hokkaido Japan
- 1-1-4 Simulation of Daily CO_2 fluxes using a Bayesian hierarchical model at the regional scale in central Hokkaido, Japan