Recognizing Partial Biometric Patterns
Lingxiao He, Zhenan Sun, Yuhao Zhu, Yunbo Wang

TL;DR
This paper introduces a robust, general framework for biometric recognition that effectively handles partial observations and varying input sizes across multiple biometric datasets, outperforming existing methods.
Contribution
The work proposes a novel feature post-processing and dictionary learning based Spatial Feature Reconstruction method for arbitrary biometric matching without alignment constraints.
Findings
Achieves state-of-the-art results on multiple datasets.
Demonstrates robustness to partial and occluded biometric data.
Validates effectiveness across face and person re-identification tasks.
Abstract
Biometric recognition on partial captured targets is challenging, where only several partial observations of objects are available for matching. In this area, deep learning based methods are widely applied to match these partial captured objects caused by occlusions, variations of postures or just partial out of view in person re-identification and partial face recognition. However, most current methods are not able to identify an individual in case that some parts of the object are not obtainable, while the rest are specialized to certain constrained scenarios. To this end, we propose a robust general framework for arbitrary biometric matching scenarios without the limitations of alignment as well as the size of inputs. We introduce a feature post-processing step to handle the feature maps from FCN and a dictionary learning based Spatial Feature Reconstruction (SFR) to match different…
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Taxonomy
TopicsFace recognition and analysis · Video Surveillance and Tracking Methods · Gait Recognition and Analysis
MethodsMax Pooling · Convolution · Triplet Loss · Fully Convolutional Network
