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Loglet SIFT for Part Description in Deformable Part Models: Application to Face Alignment
Author(s) -
Qiang Zhang,
Abhir Bhalerao
Publication year - 2016
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.30.31
Subject(s) - scale invariant feature transform , artificial intelligence , computer science , pattern recognition (psychology) , feature (linguistics) , margin (machine learning) , scale (ratio) , face (sociological concept) , feature extraction , computer vision , fourier transform , gradient descent , wavelet transform , focus (optics) , domain (mathematical analysis) , wavelet , algorithm , mathematics , artificial neural network , machine learning , mathematical analysis , philosophy , linguistics , social science , physics , quantum mechanics , sociology , optics
We focus on a novel loglet-SIFT descriptor for the parts representation in the De- formable Part Models (DPM). We manipulate the feature scales in the Fourier domain and decompose the image into multi-scale oriented gradient components for computing SIFT. The scale selection is controlled explicitly by tiling Log-wavelet functions (loglets) on the spectrum. Then oriented gradients are obtained by adding imaginary odd parts to the loglets, converting them into differential filters. Coherent feature scales and domain sizes are further generated by spectrum cropping. Our loglet gradient filters are shown to compare favourably against spatial differential operators, and have a straightforward and efficient implementation. We present experiments to validate the performance of the loglet-SIFT descriptor which show it to improve the DPM using a supervised descent method by a significant margin.

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