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Refining Bounding-Box Regression for Object Localization

Posted on:2018-02-23Degree:M.SType:Thesis
University:Portland State UniversityCandidate:Dickerson, Naomi LynnFull Text:PDF
GTID:2470390020955176Subject:Computer Science
Abstract/Summary:
For the last several years, convolutional neural network (CNN) based ob- ject detection systems have used a regression technique to predict improved object bounding boxes based on an initial proposal using low-level image features extracted from the CNN. In spite of its prevalence, there is little critical analysis of bounding-box regression or in-depth performance evaluation. This thesis surveys an array of techniques and parameter settings in order to further optimize bounding-box regression and provide guidance for its implementation. I refute a claim regarding training procedure, and demonstrate the effectiveness of using principal component analysis to handle unwieldy numbers of features produced by very deep CNNs.
Keywords/Search Tags:Regression
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