1
A Virtual Telescope on Mobile Devices Qiyuan Tian, Qingyi Meng Department of Electrical Engineering, Stanford University Mobile Image Matching Application Feature-based Matching (SIFT/ SURF) Speeded Up Robust Features (SURF) [Bay et al., ECCV 2006] Scale-invariant feature transform (SIFT) [Lowe, ICCV 1999] Mobile Virtual Telescope System Query Information Wireless Network Reference D.G. Lowe, "Distinctive image features from scale-invariant keypoints", Int. J. Comput. Vision, 60 (2) (2004), pp. 91 –110. H. Bay, T. Tuytelaars, L.V. Gool, SURF: speeded up robust features, in: European Conference on Computer Vision, vol. 1, 2006, pp. 404–417. J.M. Morel and G.Yu, ASIFT, A new framework for fully affine invariant image comparison. SIAM Journal on Imaging Sciences, 2(2):438-469 (2009) Client Motorola MOTA855 Network 802.11gn Server Lenovo Laptop Y470 2.3 GHz 4 GB RAM + WAMP Database 8 Stanford Buildings System Description Zoom in Camera Capture Image Matched + Satellite Images Crop Image Match Features Amplified Object Extract Features Display Viewfinder KDTree RANSAC x a a a a a a x = 12 11 10 02 01 00 ' (1124, 1072) SIFT features 1124 pre-RANSAC matches 11 post-RANSAC matches ANN Affine Model Threshold Feature-based Matching (Affine-SIFT) Acknowledgements: Images and figures used in this poster courtesy of corresponding authors. Future Work User Interface Low-resolution Image retrieval (multiple zooming in and retrieval/ more robust features for small images) Affine invariant Image matching Geographic information to assist retrieval (Client: GPS + inertial sensor; server: images with location tag) Image Formation Model Affine-SIFT in One Figure Main Decomposition SIFT: Rotation and translation are normalized. Zoom is simulated in scale space No latitude and longitude Affine-SIFT: Simulate latitude and longitude, then apply SIFT ) , ( * ) , ( i s q s q D D mean Thresh D D d <

Mobile Image Matching Application Feature-based Matching ...xj933th8548/Tian_Meng_A_Virtual... · Mobile Image Matching Application Feature-based Matching (SIFT/ SURF) Speeded Up

  • Upload
    others

  • View
    15

  • Download
    0

Embed Size (px)

Citation preview

Page 1: Mobile Image Matching Application Feature-based Matching ...xj933th8548/Tian_Meng_A_Virtual... · Mobile Image Matching Application Feature-based Matching (SIFT/ SURF) Speeded Up

A Virtual Telescope on Mobile DevicesQiyuan Tian, Qingyi Meng

Department of Electrical Engineering, Stanford University

Mobile Image Matching Application Feature-based Matching (SIFT/ SURF)

Speeded Up Robust Features (SURF)

[Bay et al., ECCV 2006]

Scale-invariant feature transform (SIFT)

[Lowe, ICCV 1999]

Mobile Virtual Telescope System

Query

Information

Wireless

Network

Reference�D.G. Lowe, "Distinctive image features from scale-invariant

keypoints", Int. J. Comput. Vision, 60 (2) (2004), pp. 91 –110.

�H. Bay, T. Tuytelaars, L.V. Gool, SURF: speeded up robust

features, in: European Conference on Computer Vision, vol. 1,

2006, pp. 404–417.

�J.M. Morel and G.Yu, ASIFT, A new framework for fully affine

invariant image comparison. SIAM Journal on Imaging Sciences,

2(2):438-469 (2009)

Client Motorola MOTA855

Network 802.11gn

Server Lenovo Laptop Y470

2.3 GHz 4 GB RAM + WAMP

Database 8 Stanford Buildings

System Description

Zoom in

Camera

Capture

Image

Matched +

Satellite

Images

Crop

Image

Match

Features

Amplified

Object

Extract

Features

Display

Viewfinder

KDTree RANSAC

xaaa

aaax

=

121110

020100'

(1124, 1072) SIFT features

1124 pre-RANSAC matches

11 post-RANSAC matches

ANN Affine Model

Threshold

Feature-based Matching (Affine-SIFT)

Acknowledgements: Images and figures used in this poster

courtesy of corresponding authors.

Future Work�User Interface

�Low-resolution Image

retrieval (multiple zooming in

and retrieval/ more robust

features for small images)

� Affine invariant Image

matching

�Geographic information to

assist retrieval (Client: GPS

+ inertial sensor; server:

images with location tag)Image Formation Model Affine-SIFT in One FigureMain Decomposition

SIFT:

�Rotation and translation are

normalized.

�Zoom is simulated in scale space

�No latitude and longitude

Affine-SIFT:

�Simulate latitude and longitude,

then apply SIFT

),(*),(isqsq DDmeanThreshDDd <