학술논문

A coarse-to-fine deep learning for person re-identification
Document Type
Conference
Source
2016 IEEE Winter Conference on Applications of Computer Vision (WACV) Applications of Computer Vision (WACV), 2016 IEEE Winter Conference on. :1-7 Mar, 2016
Subject
Computing and Processing
Training
Feature extraction
Noise measurement
Lighting
Face
Network topology
Machine learning
Language
Abstract
This paper proposes a novel deep learning architecture for person re-identification. The proposed network is based on a coarse-to-fine learning (CFL) approach, attempting to acquire a generic-to-specific knowledge throughout a transfer learning process. The core of the method relies on a hybrid network composed of a convolutional neural network and a deep belief network denoising autoenconder. This hybrid network is in charge of extracting features invariant to illumination varying, certain image deformations, horizontal mirroring and image blurring, and is embedded in the CFL architecture. The proposed network achieved the best results when compared with other state-of-the-arts methods on i-LIDS, CUHK01 and CUHK03 data sets, and also a competitive performance on VIPeR data set.