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Human Recognition in Video Danial Behzadi Advisor: Dr. Hadi Moradi
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Page 1: Human Recognition in Video

Human Recognition in Video

Danial Behzadi

Advisor:

Dr. Hadi Moradi

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Research Topics

● Image processing● Computer vision● Biometrics● Pattern recognition

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What is Biometrics?

● Study of methods for uniquely recognizing humans

● Based upon intrinsic physical or behavioral traits

● fingerprint, face, voice, gait, iris

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Problem

● Performance is constrained by the intrinsic factors of a trait

● No single biometrics meets all the requirements

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Solution

● Expand the feature space by fusion

● US-visit: face and finger print

● We: gait and face for now

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Gait-based Human Recognition

● Pros:– Can be identified at distant– Can track individuals over time

● Cons:– Affected by clothing– Affected by physical conditions

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Face-based Human Recognition

● Pros:– Non-intrusive– Simple computations

● Cons:– Affected by resolution, illumination, etc.– Low level of confidence in large scale

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Gait Energy Image (GEI)

● A spatio-temporal compact representation of gait in video

● Used to characterize human walking properties

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GEI Representation

G(x , y)=1N∑1

N

Bt (x , y)

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High-resolution Image Creation

● Construsct a single high-resolution image from multiple low-resolution images

● An iterative method by M. Irani and S. Peleg, 1993

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Reconstructed Face Image

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Feature Extraction and Transform

● Using PCA to reduce dimension of feature space

● Using MDA to identify the most discriminating features

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Technical Approach

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Performance

Fusion Method

LR Face Only

HR Face Only

Gait OnlyLR Face and Gait

HR Face and Gait

Recognit-ion Rate71.7%84.8%87.0%87.0%87.0%

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Future Works

● Adding a new feature● Use 3D models● Real-time computation● GPU acceleraion

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References

● Bir Bhanu, Ju Han

Human Recognition at a Distance in video, 2010

● Xiaoli Zhou and Bir Bhanu

Feature Fusion of Face and Gait for Human Recognition, 2006

● M. Irani and S. Peleg.

Motion analysis for image enhancement: Resolution, occlusion and transparency, 1993

● C. Liu and H. Wechsler.

A shape- and texture-based enhanced fisher classifier for face recognition, 2001