Title: Cao Mengfei
1 Cluster Spectrum
Correspondence
2?.Warm-ups
?. abstract
?. a special example and its counterpart
?. extension
3Warm-ups
- Recognition based on feature
- but what if what you get
is not what you really want? - Semantic Analysis various methods however it
will be great when something happens like this
- Hierarchical Semantics of Objects
- ----ICCV2005
4About Correspondence Matching(1)
- Related saying
- "????????????????????????,?????????????????????,?
Sanjay Ranade????????Shih-hsu Chang???????????????
Zsolt Miklós???????????Xudong Jiang??9??????????
?????." ???------??????????????????? - My feeling
- search for the pairwise through similarities of
objective-data
5About Correspondence Matching(2)
- according to the ways of making use of the
similarites
6i
i
?
?.
j
j
calculation
Compare the Similarity (i-i),(i-j),(j-i),(j-j
)
i
i
?.
accuracy
j
j
Compare Consistency (i-j) v.s. (i-j)
7issues to be taken into accounts
- (1) to find out the outliers in the first set
- (2) to find out the outliers in the second set
- robust to the outliers
- (3)to find out all the correct correspondent
pairwises. - robust to the noise
- Affine transformation, translation,
scalar transformation - illumination, rotation, diversity
8About spectral method
- Spectrum of Matrix Magical Mathematical
Object-properties, instead of pure Consciousness.
- objective, descriptive, essential
- Based on eigen values eigen vectors.
-
- Related saying
- music is dynamic, while score is static
- movement is dynamic, while law is static
Model the reality
9Advantages
Based on math and reality
10About clustering
- Basic problem in the field of pattern recognition
- Various methods used in various situations
- after all, to cluster is to aggregate the
objects with similar properties - how to combine it to the former issues?
11A Spectral Technique for Correspondence Problems
Using Pairwise Constraints
- Marius Leordeanu and Martial Hebert
International Conference of Computer Vision
(ICCV), October, 2005
Professor
Efficient techniques for object/category
recognition
PhD Student, RI
Use of contextual information, in particular 3-D
geometry from images, for scene analysis
Vision and Autonomous Systems Center (VASC)
The Robotics Institute
Detection, tracking, and prediction in dynamic
environments
12A Spectral Technique for Correspondence
Problems Using Pairwise Constraints
13i
i
?
?.
j
j
calculation
Compare the Similarity (i-i),(i-j),(j-i),(j-j
)
i
i
?.
accuracy
j
j
Compare Consistency (i-j) v.s. (i-j)
14A Spectral Technique for Correspondence
Problems Using Pairwise Constraints
15Fundamental thoughts
main clusters
the graph associated with matrix M
16(No Transcript)
17linprog-based method
CVPR
Matrix H represents the cost matrix of the
individual correspondence (the factor ), vector x
represent the corresponding indicatory
correspondence. Anyway, xHx stands for the
correspondence-cost thus the thing is that , as
for the value, the smaller, the better, which
comes to the problem of Integer Quadratic
Programming--NP-complete thus
linear I.P.
University of California, Berkeley
18Comparison (1)
?. Whats special? Compared to the former
occlusion and clutter
19Comparison (2)
- ?. Emulation
- 1. deformations using white noise
Ratio of time 4 1
20(No Transcript)
21Comparison (3)
- 2. considering the scalar and translation
- theoretically,translation invariant is necessary
- As for the scalar transformation
- Spectral
22Comparison (4) translation
Left spectral right linprog
23Comparison (5) scale
Upper spectral down linprog
24(No Transcript)
25Comparison (6)
- 3. robust to the outliers
26More experiments
our method is orders of magnitude faster then
linprog over 400 times faster on 20 points
problem sets (average time of 0.03 sec. vs 13
sec) and over 650 faster on 30 points problem
sets (0.25 sec. vs 165 sec.), on a 2.4 GHz
Pentium computer
27Comparison (7)
Spectral Clustering Based
28Comparison (8)
Linprog-based recognition
29Extension
?.
Providing the semantic layout of the scene,
learnt hSOs can have several useful applications
such as compact scene representation for scene
category classification and providing context
for enhanced object detection
?.
Recognizing objects from low resolution images
30Extension(2)
Combined with direction Affine transform
?.
?.
What tools to use, how to use(spectral clustering)
i
k
i
k
j
j
31Thanks a lot ...