de
en
Schliessen
Detailsuche
Bibliotheken
Projekt
Impressum
Datenschutz
zum Inhalt
Detailsuche
Schnellsuche:
OK
Ergebnisliste
Titel
Titel
Inhalt
Inhalt
Seite
Seite
Im Dokument suchen
Fathi Kazerouni, Masoud: Fully-automated plant recognition systems in challenging controlled and uncontrolled environments using classical and Deep Learning methods. 2019
Inhalt
Abstract
Zusammenfassung
Acknowledgments
Contents
List of Figures
List of Tables
Introduction
Motivation
Problem Description
Classification of Plants
Real-time Natural Plant Recognition System
Problems and Needs of Plant Recognition System
Goals of the Dissertation
Novel Contributions of the Dissertation
Combined Feature Detection and Description in Plant Classification
Classifying a Large Number of Plant Species
Significant Improvement of Systems for Classification of a Large Number of Plants
General Natural Plant Recognition based on Modern Combined Algorithms
Novel Natural Plant Recognition System Based on a Deep Learning Algorithm
Novelty of Dataset and Systems Implemented for Natural Plant Recognition
Real-time, Mobile, Natural, Plant Recognition System
Fully Automated Plant Recognition System
Document Structure
Publications
Literature Review and Fundamentals
Types of Plant Species
State-of-the-Art in Plant Recognition
Short Literature Review for Plant Recognition Systems Based on Neural Networks and Plant Robots
Summary
Datasets and Availability
Classic Datasets
One-hundred Species Plants Leaf Data Set
Leaf Shapes Database
Flavia Dataset
Swedish Leaf Dataset
Smithsonian Leaf Dataset
Semi-Modern Datasets
Pl@netleaf dataset
Pl@netleaf dataset II
Modern Dataset
New Natural Plant Dataset
Summary of Modern Dataset
Image Analysis
Investigation of Image Histograms
Investigation of Histogram Equalization
Channels of Image and Image Reconstruction
Conclusion
Keypoint Detection, Feature Description and Matching
Related Work
Keypoint Detection and Feature Extraction
Local Features: Detection and Description
Localization of Keypoints
Modern Algorithms (Analysis of Region and Patch)
Matching
General Overview of Matching Technique
Results for Matching and Explanation
Combined Detection and Description Methods
HARRIS-SIFT and HARRIS-SURF
FAST-SIFT and FAST-SURF
Conclusion
Implementation and Comparison of Efficient Modern Description Methods for Recognition of Classic Plant Species
Introduction
General Overview
Image Pre-processing
Black and White Image
Grayscale Image
Bag of Words
First Subset of Algorithms
Second Subset of Algorithms
Bag of Words Model
Classifier Training
Investigation of Machine Learning and Classifier Approaches
Experiment, Discussion, Results and Performance Analysis
Some Important Metrics for Measuring the Quality of Classifier Systems
Experiment and Discussion of the Systems by the SIFT Component
Experiment and Discussion of the Systems by the SURF Component
Applications of the Proposed Systems
Acknowledgment
Conclusions and Future Scope
Automatic Plant Recognition Systems for Challenging Natural Plant Species using Modern Detection and Description Methods
Introduction
Pre-processing Examination
State-of-the-Art
Set-up and Study of Algorithms
Aims of the Current Study
Conclusion
General Overview
Approach for Natural Plant Recognition Systems
Image Pre-processing
Feature Detection and Extraction
Modeling and Training
SVM Classification and Testing
Experiment, Discussion, Results and Performance Analysis
Short Description of the Dataset and Setups
Details of Equipment
Visual Analysis of Natural Images
Experiments and Measurements
A Short Talk on the Experiments, Results and Performances of the Natural Recognition Systems
Systems Potential for Future Use
Acknowledgment
Conclusions and the Future Scope
Novel System: Deep Learning System for Recognition of Natural Plant Species
Introduction
Deep Learning and Neural Networks' Fundamentals
Deep Learning Timeline
ANN
Deep Learning Definitions and Classes
Deep Learning and Traditional Machine Learning in Classification Tasks
Proposed Approach
CNN History and State-of-the-art
Linked Concepts
Building Blocks of Deep CNNs and Relevant Definitions
Convolutional Layer
Activation Layer
Pooling Layer
Fully Connected Layer
Loss Layer
Local Response Normalization
Blob
Topology of the Proposed Deep CNN Model
Materials and Equipment
Record of Data
Used PCs
Experiments and Results
Classification Accuracy
Runtime by using GPU and CPU
Confusion Matrix, Precision and Recall
Visualization of Proposed Deep Model and Scoring
Deep CNN, Drawbacks and the Most Recent and Potential Upcoming Breakthrough
DNPRS, Applications and Future Work
Conclusion
Mobile Plant Recognition Robot (Real-time Application of the DNPRS in Challenging Outdoor Environments)
Introduction
Related Works
System Set-Up & Schematic
Image Acquisition and Cameras
Agricultural Mobile Robot-Zephyr
Experimental Evaluation and Results
Feature Work
Conclusion
Conclusions
Summary
Direction for Future Work
Appendices
Implementation of Several Pre-processing Algorithms
Canny Algorithm (Edge Detector)
K-means Color Clustering
Implementation of Grabcut Algorithm
Superpixel-based Segmentation Algorithm
Human Nervous System
Human Learning vs Machine Learning
Feedforward Neural Network
Definitions of Concepts
Common Deep Learning Frameworks
Theano
Torch
TensorFlow
Keras
Caffe
Constructed Confusion Matrix for each Proposed System
References
Acronyms