de
en
Schliessen
Detailsuche
Bibliotheken
Projekt
Impressum
Datenschutz
zum Inhalt
Detailsuche
Schnellsuche:
OK
Ergebnisliste
Titel
Titel
Inhalt
Inhalt
Seite
Seite
Im Dokument suchen
Ha, Mai Lan: Understanding images via visual similarity and deep feature representations. 2020
Inhalt
Declaration of Authorship
Zusammenfassungen
Abstract
Acknowledgements
Contents
List of Figures
List of Tables
Introduction
Convolutional Neural Networks
Artificial Neural Network (ANN)
McCulloch-Pitts neuron (M-P neuron)
Perceptron
Neural Networks
Convolutional Neural Networks (CNN)
Fundamentals of CNN
CNN Architectures
I Perceived Similarity
Pixel-Based Perception-Inspired Metric for Intrinsic Imaging
Intrinsic Imaging
Intrinsic Imaging Formulation
Multi-View Multi-Illuminant Intrinsic Dataset
Existing Evaluation Metrics
Point-wise Consistency Metric (PCM)
Overview of the Algorithm
Point-wise Consistency Error
Point Selection Strategy
Sampling And Results
Evaluation
Chapter Summary
Perceptual Color Composition Similarity
Related Work For Perceptual Color Similarity
Hand-crafted Features for Color Similarity
Learned Features for Visual Similarity
Datasets for Perceptual Similarity
Process to Define Perceptual Color Composition Similarity
Binary Dataset and Network
Rating Dataset
Study on Rating Strategies
Quality of the Rating Dataset
Computational Model of Color Composition Similarity
Application 1: Global Color Descriptor
Application 2: Fine-Grained Image Retrieval
Related Work
Content versus Color Retrieval
Features and Training Model for Fine-Grained Retrieval
Results Analysis and Discussion
Analogy Image Retrieval - An Inspiration
Application 3: Neural Style Transfer with Perceptual Color Similarity
Related Work
Perceptual Color Transfer
Combining Style Transfer and Perceptual Color Transfer
Results and Analysis
More Style-Color Transfer Results
More color transfer results
Chapter Summary
II Deep Features
Shape Extraction and Semantic Segmentation
Image Feature Representation
Deep Feature Extraction
Retrieval with Spatial Constraint
Results
Shape Extraction And Weakly Supervised Segmentation
Related Work
High Resolution Class Activation Map (rCAM) and Shape Extraction
Evaluations
Chapter Summary
Neural Discriminant Analysis
Introduction To Discriminant Analysis For Fine-Grained Visual Classification
Related Work
Fine-Grained Visual Classification (FGVC)
Linear Discriminant Analysis (LDA)
Two-phase Neural Discriminant Analysis (NDA)
Pre-optimized Features Extracted from Pre-trained DCNNs
Feature Discriminant Analysis
Discriminant Analysis Optimization with Neural Networks
Experiments with Two-phase NDA
Datasets and Feature Extraction
Implementation
Results
Discussion
Combined Optimization NDA
Chapter Summary
Conclusion
Publications
External Bibliography