3D face recognition with wireless transportation

In this dissertation, we focus on two related parts of a 3D face recognition system with wireless transportation. In the first part, the core components of the system, namely, the feature extraction and classification component, are introduced. In the feature extraction component, range images are tak...

Full description

Bibliographic Details
Main Author: Zou, Le
Other Authors: Lu, Mi
Format: Others
Language:en_US
Published: 2010
Subjects:
Online Access:http://hdl.handle.net/1969.1/ETD-TAMU-1448
http://hdl.handle.net/1969.1/ETD-TAMU-1448
id ndltd-tamu.edu-oai-repository.tamu.edu-1969.1-ETD-TAMU-1448
record_format oai_dc
spelling ndltd-tamu.edu-oai-repository.tamu.edu-1969.1-ETD-TAMU-14482013-01-08T10:40:27Z3D face recognition with wireless transportationZou, LeFace recognitionFeature extractionThree-dimensional visionDigital Image ProcessingImage Classification3D modelDistributed algorithmGraph theoryProtocolsRoutingSensor networksShortest pathTopologyIn this dissertation, we focus on two related parts of a 3D face recognition system with wireless transportation. In the first part, the core components of the system, namely, the feature extraction and classification component, are introduced. In the feature extraction component, range images are taken as inputs and processed in order to extract features. The classification component uses the extracted features as inputs and makes classification decisions based on trained classifiers. In the second part, we consider the wireless transportation problem of range images, which are captured by scattered sensor nodes from target objects and are forwarded to the core components (i.e., feature extraction and classification components) of the face recognition system. Contrary to the conventional definition of being a transducer, a sensor node can be a person, a vehicle, etc. The wireless transportation component not only brings flexibility to the system but also makes the “proactive” face recognition possible. For the feature extraction component, we first introduce the 3D Morphable Model. Then a 3D feature extraction algorithm based on the 3D Morphable Model is presented. The algorithm is insensitive to facial expression. Experimental results show that it can accurately extract features. Following that, we discuss the generic face warping algorithm that can quickly extract features with high accuracy. The proposed algorithm is robust to holes, facial expressions and hair. Furthermore, our experimental results show that the generated features can highly differentiate facial images. For the classification component, a classifier based on Mahalanobis distance is introduced. Based on the classifier, recognition performances of the extracted features are given. The classification results demonstrate the advantage of the features from the generic face warping algorithm. For the wireless transportation of the captured images, we consider the location-based wireless sensor networks (WSN). In order to achieve efficient routing perfor¬mance, a set of distributed stateless routing protocols (PAGER) are proposed for wireless sensor networks. The loop-free and delivery-guaranty properties of the static version (PAGER-S) are proved. Then the performance of PAGER protocols are compared with other well-known routing schemes using network simulator 2 (NS2). Simulation results demonstrate the advantages of PAGER.Lu, MiXiong, Zixiang2010-01-14T23:59:50Z2010-01-16T01:47:17Z2010-01-14T23:59:50Z2010-01-16T01:47:17Z2007-082009-05-15BookThesisElectronic Dissertationtextelectronicapplication/pdfborn digitalhttp://hdl.handle.net/1969.1/ETD-TAMU-1448http://hdl.handle.net/1969.1/ETD-TAMU-1448en_US
collection NDLTD
language en_US
format Others
sources NDLTD
topic Face recognition
Feature extraction
Three-dimensional vision
Digital Image Processing
Image Classification
3D model
Distributed algorithm
Graph theory
Protocols
Routing
Sensor networks
Shortest path
Topology
spellingShingle Face recognition
Feature extraction
Three-dimensional vision
Digital Image Processing
Image Classification
3D model
Distributed algorithm
Graph theory
Protocols
Routing
Sensor networks
Shortest path
Topology
Zou, Le
3D face recognition with wireless transportation
description In this dissertation, we focus on two related parts of a 3D face recognition system with wireless transportation. In the first part, the core components of the system, namely, the feature extraction and classification component, are introduced. In the feature extraction component, range images are taken as inputs and processed in order to extract features. The classification component uses the extracted features as inputs and makes classification decisions based on trained classifiers. In the second part, we consider the wireless transportation problem of range images, which are captured by scattered sensor nodes from target objects and are forwarded to the core components (i.e., feature extraction and classification components) of the face recognition system. Contrary to the conventional definition of being a transducer, a sensor node can be a person, a vehicle, etc. The wireless transportation component not only brings flexibility to the system but also makes the “proactive” face recognition possible. For the feature extraction component, we first introduce the 3D Morphable Model. Then a 3D feature extraction algorithm based on the 3D Morphable Model is presented. The algorithm is insensitive to facial expression. Experimental results show that it can accurately extract features. Following that, we discuss the generic face warping algorithm that can quickly extract features with high accuracy. The proposed algorithm is robust to holes, facial expressions and hair. Furthermore, our experimental results show that the generated features can highly differentiate facial images. For the classification component, a classifier based on Mahalanobis distance is introduced. Based on the classifier, recognition performances of the extracted features are given. The classification results demonstrate the advantage of the features from the generic face warping algorithm. For the wireless transportation of the captured images, we consider the location-based wireless sensor networks (WSN). In order to achieve efficient routing perfor¬mance, a set of distributed stateless routing protocols (PAGER) are proposed for wireless sensor networks. The loop-free and delivery-guaranty properties of the static version (PAGER-S) are proved. Then the performance of PAGER protocols are compared with other well-known routing schemes using network simulator 2 (NS2). Simulation results demonstrate the advantages of PAGER.
author2 Lu, Mi
author_facet Lu, Mi
Zou, Le
author Zou, Le
author_sort Zou, Le
title 3D face recognition with wireless transportation
title_short 3D face recognition with wireless transportation
title_full 3D face recognition with wireless transportation
title_fullStr 3D face recognition with wireless transportation
title_full_unstemmed 3D face recognition with wireless transportation
title_sort 3d face recognition with wireless transportation
publishDate 2010
url http://hdl.handle.net/1969.1/ETD-TAMU-1448
http://hdl.handle.net/1969.1/ETD-TAMU-1448
work_keys_str_mv AT zoule 3dfacerecognitionwithwirelesstransportation
_version_ 1716504321836711936