Automated Solar Cavity Detection

Slides:



Advertisements
Similar presentations
Context-based object-class recognition and retrieval by generalized correlograms by J. Amores, N. Sebe and P. Radeva Discussion led by Qi An Duke University.
Advertisements

EE462 MLCV Lecture 5-6 Object Detection – Boosting Tae-Kyun Kim.
Rapid Object Detection using a Boosted Cascade of Simple Features Paul Viola, Michael Jones Conference on Computer Vision and Pattern Recognition 2001.
Rapid Object Detection using a Boosted Cascade of Simple Features Paul Viola, Michael Jones Conference on Computer Vision and Pattern Recognition 2001.
11/26/081 AUTOMATIC SOLAR ACTIVITY DETECTION BASED ON IMAGES FROM HSOS NAOC, HSOS YANG Xiao, LIN GangHua
Face Detection & Synthesis using 3D Models & OpenCV Learning Bit by Bit Don Miller ITP, Spring 2010.
Presenter: Hoang, Van Dung
AdaBoost & Its Applications
Face detection Many slides adapted from P. Viola.
Cos 429: Face Detection (Part 2) Viola-Jones and AdaBoost Guest Instructor: Andras Ferencz (Your Regular Instructor: Fei-Fei Li) Thanks to Fei-Fei Li,
EE462 MLCV Lecture 5-6 Object Detection – Boosting Tae-Kyun Kim.
Bohr Robot Group OpenCV ECE479 John Chhokar J.C. Arada Richard Dixon.
The Viola/Jones Face Detector Prepared with figures taken from “Robust real-time object detection” CRL 2001/01, February 2001.
The Viola/Jones Face Detector (2001)
HCI Final Project Robust Real Time Face Detection Paul Viola, Michael Jones, Robust Real-Time Face Detetion, International Journal of Computer Vision,
Rapid Object Detection using a Boosted Cascade of Simple Features
Generic Object Detection using Feature Maps Oscar Danielsson Stefan Carlsson
Robust Real-time Object Detection by Paul Viola and Michael Jones ICCV 2001 Workshop on Statistical and Computation Theories of Vision Presentation by.
Face detection and recognition Many slides adapted from K. Grauman and D. Lowe.
A Robust Real Time Face Detection. Outline  AdaBoost – Learning Algorithm  Face Detection in real life  Using AdaBoost for Face Detection  Improvements.
Face Recognition with Harr Transforms and SVMs EE645 Final Project May 11, 2005 J Stautzenberger.
Adaboost and its application
CS 223B Assignment 1 Help Session Dan Maynes-Aminzade.
A Robust Real Time Face Detection. Outline  AdaBoost – Learning Algorithm  Face Detection in real life  Using AdaBoost for Face Detection  Improvements.
Robust Real-Time Object Detection Paul Viola & Michael Jones.
Viola and Jones Object Detector Ruxandra Paun EE/CS/CNS Presentation
Dynamic Cascades for Face Detection 第三組 馮堃齊、莊以暘. 2009/01/072 Outline Introduction Dynamic Cascade Boosting with a Bayesian Stump Experiments Conclusion.
Viewpoint Tracking for 3D Display Systems A look at the system proposed by Yusuf Bediz, Gözde Bozdağı Akar.
Foundations of Computer Vision Rapid object / face detection using a Boosted Cascade of Simple features Presented by Christos Stoilas Rapid object / face.
F ACE D ETECTION FOR A CCESS C ONTROL By Dmitri De Klerk Supervisor: James Connan.
Face Detection CSE 576. Face detection State-of-the-art face detection demo (Courtesy Boris Babenko)Boris Babenko.
FACE DETECTION AND RECOGNITION By: Paranjith Singh Lohiya Ravi Babu Lavu.
Vision-Based Biometric Authentication System by Padraic o hIarnain Final Year Project Presentation.
Face Detection using the Viola-Jones Method
Human tracking and counting using the KINECT range sensor based on Adaboost and Kalman Filter ISVC 2013.
A Tutorial on Object Detection Using OpenCV
Using Statistic-based Boosting Cascade Weilong Yang, Wei Song, Zhigang Qiao, Michael Fang 1.
EADS DS / SDC LTIS Page 1 7 th CNES/DLR Workshop on Information Extraction and Scene Understanding for Meter Resolution Image – 29/03/07 - Oberpfaffenhofen.
Object Detection Using the Statistics of Parts Presented by Nicholas Chan – Advanced Perception Robust Real-time Object Detection Henry Schneiderman.
Detecting Pedestrians Using Patterns of Motion and Appearance Paul Viola Microsoft Research Irfan Ullah Dept. of Info. and Comm. Engr. Myongji University.
Window-based models for generic object detection Mei-Chen Yeh 04/24/2012.
Sign Classification Boosted Cascade of Classifiers using University of Southern California Thang Dinh Eunyoung Kim
Lecture 29: Face Detection Revisited CS4670 / 5670: Computer Vision Noah Snavely.
DIEGO AGUIRRE COMPUTER VISION INTRODUCTION 1. QUESTION What is Computer Vision? 2.
Terrorists Team members: Ágnes Bartha György Kovács Imre Hajagos Wojciech Zyla.
Robust Real-time Face Detection by Paul Viola and Michael Jones, 2002 Presentation by Kostantina Palla & Alfredo Kalaitzis School of Informatics University.
ECE738 Advanced Image Processing Face Detection IEEE Trans. PAMI, July 1997.
Limitations of Cotemporary Classification Algorithms Major limitations of classification algorithms like Adaboost, SVMs, or Naïve Bayes include, Requirement.
Robust Real Time Face Detection
Adaboost and Object Detection Xu and Arun. Principle of Adaboost Three cobblers with their wits combined equal Zhuge Liang the master mind. Failure is.
The Viola/Jones Face Detector A “paradigmatic” method for real-time object detection Training is slow, but detection is very fast Key ideas Integral images.
Bibek Jang Karki. Outline Integral Image Representation of image in summation format AdaBoost Ranking of features Combining best features to form strong.
Learning to Detect Faces A Large-Scale Application of Machine Learning (This material is not in the text: for further information see the paper by P.
Hand Gesture Recognition Using Haar-Like Features and a Stochastic Context-Free Grammar IEEE 高裕凱 陳思安.
FACE DETECTION : AMIT BHAMARE. WHAT IS FACE DETECTION ? Face detection is computer based technology which detect the face in digital image. Trivial task.
Lecture 10 Pattern Recognition and Classification II
A Brief Introduction on Face Detection Mei-Chen Yeh 04/06/2010 P. Viola and M. J. Jones, Robust Real-Time Face Detection, IJCV 2004.
Hand Detection with a Cascade of Boosted Classifiers Using Haar-like Features Qing Chen Discover Lab, SITE, University of Ottawa May 2, 2006.
AdaBoost Algorithm and its Application on Object Detection Fayin Li.
Evaluation of Gender Classification Methods with Automatically Detected and Aligned Faces Speaker: Po-Kai Shen Advisor: Tsai-Rong Chang Date: 2010/6/14.
Adaboost (Adaptive boosting) Jo Yeong-Jun Schapire, Robert E., and Yoram Singer. "Improved boosting algorithms using confidence- rated predictions."
1 Munther Abualkibash University of Bridgeport, CT.
Reading: R. Schapire, A brief introduction to boosting
2. Skin - color filtering.
License Plate Detection
Learning to Detect Faces Rapidly and Robustly
Cos 429: Face Detection (Part 2) Viola-Jones and AdaBoost Guest Instructor: Andras Ferencz (Your Regular Instructor: Fei-Fei Li) Thanks to Fei-Fei.
ADABOOST(Adaptative Boosting)
A Tutorial on Object Detection Using OpenCV
ECE738 Final Project Face Detection Baseline
Presentation transcript:

Automated Solar Cavity Detection Image Processing & Pattern Recognition Athena Johnson

Outline Introduction Background Problem Statement Proposed Solution Experiments Conclusions Future Work

Introduction

background Solar Dynamics Observatory (SDO) Extreme Ultraviolet Variability Experiment (EVE) Helioseismic and Magnetic Imager (HMI) Atmospheric Imaging Assembly (AIA) 1.5 Terabytes (TB) of data per day -- I suggest completely remove any discussion about CME. -- Instead, focus on large volume of solar images using numbers and facts, and thus the need for automated detection of solar cavities. -- My understanding is there is not much previous research on solar cavities. But you do need to explain all you know about previous research on solar cavity detection. Ultimately, the audience wants to clearly know: what have been done? What is your approach?

Atmospheric Imaging Assembly (AIA) Images the Corona of the Sun Study of solar storms How they are created? How they propagate upward? How they emerge from the Sun? How magnetic fields heat the corona? -- I suggest completely remove any discussion about CME. -- Instead, focus on large volume of solar images using numbers and facts, and thus the need for automated detection of solar cavities. -- My understanding is there is not much previous research on solar cavities. But you do need to explain all you know about previous research on solar cavity detection. Ultimately, the audience wants to clearly know: what have been done? What is your approach?

SOLAR CAVITIES Currently an increase in implementations focused on Solar Cavities Off limb structures Darker elliptical structure, encompassed by lighter regions Hypothesized to be precursors to solar events Aid in establishing a predictive solar weather system -- I suggest completely remove any discussion about CME. -- Instead, focus on large volume of solar images using numbers and facts, and thus the need for automated detection of solar cavities. -- My understanding is there is not much previous research on solar cavities. But you do need to explain all you know about previous research on solar cavity detection. Ultimately, the audience wants to clearly know: what have been done? What is your approach?

SOLAR CAVITIES Labrosse, Dalla and Marshall (2010) Radial intensity profiles Support Vector Machine (SVM) Region growing Calculation of metrics Running difference on subsequent images -- I suggest completely remove any discussion about CME. -- Instead, focus on large volume of solar images using numbers and facts, and thus the need for automated detection of solar cavities. -- My understanding is there is not much previous research on solar cavities. But you do need to explain all you know about previous research on solar cavity detection. Ultimately, the audience wants to clearly know: what have been done? What is your approach?

SOLAR CAVITIES Durak and Nasraoui (2010) Exraction of principal contours Calculations on contours Adaboost -- I suggest completely remove any discussion about CME. -- Instead, focus on large volume of solar images using numbers and facts, and thus the need for automated detection of solar cavities. -- My understanding is there is not much previous research on solar cavities. But you do need to explain all you know about previous research on solar cavity detection. Ultimately, the audience wants to clearly know: what have been done? What is your approach?

Detections based on metrics Weak events missed Multiple detections Problem statement Computation times Detections based on metrics Weak events missed Multiple detections Multiple events missed Low hit rates -- show a few different types of solar cavities to help with your points.

Haar Classifier Method that Paul Viola and Michael Jones published in 2001 Four key concepts Haar-like features Integral Image Adaboosting Cascade of Classifiers

Haar-Like Features Aids in satisfying real time requirements Rectangular regions Reduces Computation Good.  

Integral images Rapid computation of Haar-like features

Integral images 8+6+2+5+6+3 = 30 50-17-5+2 = 30 Original Image

adaboosting Aids in increasing the accuracy and speed Begins with uniform weights over training examples Obtain a weak classifier Update weights Weak Classifier h1(x) Like integral image, start with statement on the reason why Adaboosting is used, then explain how it works.

adaboosting Weak Classifier h2(x) Weak Classifier h3(x)

adaboosting Weak classifiers combined to form the strong classifier  

Cascade of classifiers Increases the speed of detections All Haar-like features from all stages combined into a final Classifier Model Cascade of boosted classifiers with Haar-like features Again, why a cascade of classifiers is used?

Cascade of classifiers A series of classifiers are applied to every subwindow of image A positive result from the first classifier, triggers evaluation from the second classifier and so on

Initial solution -- Talk about the problems with the first model first, then the second model. -- focus on the differences when you explain the model.

Results Manually selected Training Image Sets This slide is completely out of place. If you want to show the result of the first model, show and explain the model first. Manually selected Training Image Sets Positive Samples = 100 Negative Samples = 400 ≈ 79.6% Correct detection rate was achieved

Results Missed detections in specific quadrants Detections on the Sun’s disk Overlapping detections

Proposed Solution -- Talk about the problems with the first model first, then the second model. -- focus on the differences when you explain the model.

Minimized training sets 10 Positive Images 10 Negative Images Do not just use “experiment.” Use more specific title that is in consistent with the model.

Mark regions of interest and rotate Deriving images from selected images Rotation applied to both training sets Use more specific title that is in consistent with the model.

Transform regions of interest Transformations on cavities Use more specific title that is in consistent with the model.

Preprocessing Edge Detection Hough Lines Calculate the radius Use more specific title that is in consistent with the model.

Results Derived Training Image Sets Initial image in sets = 10 Positive Samples = 3600 Negative Samples = 3600 ≈ 96% Correct detection rate was achieved I understand this 96% is the result of performance testing result. Please check out how this rate is calculated. Average of 10 runs? 20 runs? From 10-fold cross validation?

Final image with detections For each slide, you want to tell the audience something. If possible, use more specific slide title.

Conclusion Less manual work Short training times < 22 hours Wider range of detections Weak and strong cavities Fast run times < 1 second per image Higher hit rates Let the facts talk. When you say “short training time” How long exactly?

Future work Technique Improvement Reduction of False Positives Contour Detections Template Matching Customized Haar-like features

Future work Find optimal number of training sets Extract Metrics User Interface

QUESTIONS?