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                <front>
                    <journal-meta>
                    <journal-id journal-id-type="publisher-id">ei</journal-id>
                    <journal-title>Electronic Imaging</journal-title>
                    <issn pub-type="ppub">2470-1173</issn><issn pub-type="epub">2470-1173</issn>
                    <publisher>
                        <publisher-name>Society for Imaging Science and Technology</publisher-name>
                        <publisher-loc>IS&amp;T 7003 Kilworth Lane, Springfield, VA 22151 USA</publisher-loc>
                    </publisher>
                    </journal-meta>
                    <article-meta>
                    <article-id pub-id-type="doi">10.2352/EI.2024.36.11.HVEI-224</article-id>
                    <article-id pub-id-type="publisher-id">HVEI-224</article-id>
                    <article-categories>
                        <subj-group>
                        <subject>Proceedings</subject>
                        </subj-group>
                    </article-categories>
                    <title-group>
                        <article-title>Adapting Pretrained Networks for Image Quality Assessment on High Dynamic Range Displays</article-title>
                    </title-group><contrib-group content-type="all"><contrib contrib-type="author"><name>
                            <surname>Chubarau</surname>
                            <given-names>Andrei </given-names>
                           </name> <xref ref-type="aff" rid="aff1author1"/></contrib><aff id="aff1author1">McGill University, Canada</aff></contrib-group><contrib-group content-type="all"><contrib contrib-type="author"><name>
                            <surname>Yoo</surname>
                            <given-names>Hyunjin </given-names>
                           </name> <xref ref-type="aff" rid="aff2author2"/></contrib><aff id="aff2author2"> Faurecia IRYStec Inc.,  Canada</aff></contrib-group><contrib-group content-type="all"><contrib contrib-type="author"><name>
                            <surname>Akhavan</surname>
                            <given-names>Tara </given-names>
                           </name> <xref ref-type="aff" rid="aff2author3"/></contrib><aff id="aff2author3"> Faurecia IRYStec Inc.,  Canada</aff></contrib-group><contrib-group content-type="all"><contrib contrib-type="author"><name>
                            <surname>Clark</surname>
                            <given-names>James </given-names>
                           </name> <xref ref-type="aff" rid="aff1author4"/></contrib><aff id="aff1author4">McGill University, Canada</aff></contrib-group><abstract>
                    <title>Abstract</title>
                    <p>Conventional image quality metrics (IQMs), such as PSNR and SSIM, are designed for perceptually uniform gamma-encoded pixel values and cannot be directly applied to perceptually non-uniform linear high-dynamic-range (HDR) colors. Similarly, most of the available datasets consist of standard-dynamic-range (SDR) images collected in standard and possibly uncontrolled viewing conditions. Popular pre-trained neural networks are likewise intended for SDR inputs, restricting their direct application to HDR content. On the other hand, training HDR models from scratch is challenging due to limited available HDR data. In this work, we explore more effective approaches for training deep learning-based models for image quality assessment (IQA) on HDR data. We leverage networks pre-trained on SDR data (source domain) and re-target these models to HDR (target domain) with additional fine-tuning and domain adaptation. We validate our methods on the available HDR IQA datasets, demonstrating that models trained with with our combined recipe outperform previous baselines, converge much quicker, and reliably generalize to HDR inputs.</p>
                    </abstract><pub-date>
                        <day>21</day>
                        <month>1</month>
                        <year>2024</year>
                        </pub-date><volume>36</volume>
                    <issue-acronym>HVEI</issue-acronym>
                    <issue-title>Human Vision and Electronic Imaging 2024</issue-title>
                    <issue seq="224">11</issue>
                    <fpage>224-1</fpage>
                    <lpage>224-7</lpage>
                    <permissions>
                         <copyright-statement>This work is licensed under the Creative Commons Attribution 4.0 International License. To view a copy of this license, visit http://creativecommons.org/licenses/by/4.0/.</copyright-statement>
                        <copyright-year>2024</copyright-year>
                    </permissions><kwd-group><kwd>Deep Learning</kwd><kwd>Domain Adaptation</kwd><kwd>High Dynamic Range</kwd><kwd>Image Quality</kwd><kwd>Optimization</kwd><kwd>Transformers</kwd></kwd-group></article-meta>
                </front>
                </article>