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Boosting-Based Face Detection and Adaptation (Paperback)
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Boosting-Based Face Detection and Adaptation (Paperback)
Series: Synthesis Lectures on Computer Vision
Expected to ship within 10 - 15 working days
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Face detection, because of its vast array of applications, is one
of the most active research areas in computer vision. In this book,
we review various approaches to face detection developed in the
past decade, with more emphasis on boosting-based learning
algorithms. We then present a series of algorithms that are
empowered by the statistical view of boosting and the concept of
multiple instance learning. We start by describing a boosting
learning framework that is capable to handle billions of training
examples. It differs from traditional bootstrapping schemes in that
no intermediate thresholds need to be set during training, yet the
total number of negative examples used for feature selection
remains constant and focused (on the poor performing ones). A
multiple instance pruning scheme is then adopted to set the
intermediate thresholds after boosting learning. This algorithm
generates detectors that are both fast and accurate. We then
present two multiple instance learning schemes for face detection,
multiple instance learning boosting (MILBoost) and winner-take-all
multiple category boosting (WTA-McBoost). MILBoost addresses the
uncertainty in accurately pinpointing the location of the object
being detected, while WTA-McBoost addresses the uncertainty in
determining the most appropriate subcategory label for multiview
object detection. Both schemes can resolve the ambiguity of the
labeling process and reduce outliers during training, which leads
to improved detector performances. In many applications, a detector
trained with generic data sets may not perform optimally in a new
environment. We propose detection adaption, which is a promising
solution for this problem. We present an adaptation scheme based on
the Taylor expansion of the boosting learning objective function,
and we propose to store the second order statistics of the generic
training data for future adaptation. We show that with a small
amount of labeled data in the new environment, the detector's
performance can be greatly improved. We also present two
interesting applications where boosting learning was applied
successfully. The first application is face verification for
filtering and ranking image/video search results on celebrities. We
present boosted multi-task learning (MTL), yet another boosting
learning algorithm that extends MILBoost with a graphical model.
Since the available number of training images for each celebrity
may be limited, learning individual classifiers for each person may
cause overfitting. MTL jointly learns classifiers for multiple
people by sharing a few boosting classifiers in order to avoid
overfitting. The second application addresses the need of speaker
detection in conference rooms. The goal is to find who is speaking,
given a microphone array and a panoramic video of the room. We show
that by combining audio and visual features in a boosting
framework, we can determine the speaker's position very accurately.
Finally, we offer our thoughts on future directions for face
detection. Table of Contents: A Brief Survey of the Face Detection
Literature / Cascade-based Real-Time Face Detection / Multiple
Instance Learning for Face Detection / Detector Adaptation / Other
Applications / Conclusions and Future Work
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