Automated Design of Salient Object Detection Algorithms with Brain Programming

Despite recent improvements in computer vision, artificial visual systems’ design is still daunting since an explanation of visual computing algorithms remains elusive. Salient object detection is one problem that is still open due to the difficulty of understanding the brain’s inner workings. Progr...

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Published inApplied sciences Vol. 12; no. 20; p. 10686
Main Authors Olague, Gustavo, Menendez-Clavijo, Jose Armando, Olague, Matthieu, Ocampo, Arturo, Ibarra-Vazquez, Gerardo, Ochoa, Rocio, Pineda, Roberto
Format Journal Article
LanguageEnglish
Published Basel MDPI AG 01.10.2022
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ISSN2076-3417
2076-3417
DOI10.3390/app122010686

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Summary:Despite recent improvements in computer vision, artificial visual systems’ design is still daunting since an explanation of visual computing algorithms remains elusive. Salient object detection is one problem that is still open due to the difficulty of understanding the brain’s inner workings. Progress in this research area follows the traditional path of hand-made designs using neuroscience knowledge or, more recently, deep learning, a particular branch of machine learning. Recently, a different approach based on genetic programming appeared to enhance handcrafted techniques following two different strategies. The first method follows the idea of combining previous hand-made methods through genetic programming and fuzzy logic. The second approach improves the inner computational structures of basic hand-made models through artificial evolution. This research proposes expanding the artificial dorsal stream using a recent proposal based on symbolic learning to solve salient object detection problems following the second technique. This approach applies the fusion of visual saliency and image segmentation algorithms as a template. The proposed methodology discovers several critical structures in the template through artificial evolution. We present results on a benchmark designed by experts with outstanding results in an extensive comparison with the state of the art, including classical methods and deep learning approaches to highlight the importance of symbolic learning in visual saliency.
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ISSN:2076-3417
2076-3417
DOI:10.3390/app122010686