Visual percepts quality recognition using convolutional neural networks
In visual recognition systems, it is necessary to identify between good or bad quality images. Visual perceptions are discrete representation of observable objects. In typical systems, visual parameters are adjusted for optimal detection of good quality images. However, over a wide range of visual c...
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oai:animorepository.dlsu.edu.ph:faculty_research-40262021-11-22T01:06:05Z Visual percepts quality recognition using convolutional neural networks Billones, Robert Kerwin C. Bandala, Argel A. Gan Lim, Laurence A. Sybingco, Edwin Fillone, Alexis M. Dadios, Elmer P. In visual recognition systems, it is necessary to identify between good or bad quality images. Visual perceptions are discrete representation of observable objects. In typical systems, visual parameters are adjusted for optimal detection of good quality images. However, over a wide range of visual context scenarios, these parameters are usually not optimized. This study focused on the learning and detection of good and bad percepts from a given visual context using a convolutional neural network. The system utilized a perception-action model with memory and learning mechanism which is trained and validated in four different road traffic locations (DS0, DS3-1, DS4-1, DS4-3). The training accuracy for DS0, DS3-1, DS4-1, and DS4-3 are 93.53%, 91.16%, 93.39%, and 95.76%, respectively. The validation accuracy for DS0, DS3-1, DS4-1, and DS4-3 are 88.73%, 77.40%, 95.21%, and 83.56%, respectively. Based from these results, the system can adequately learn to differentiate between good or bad quality percepts. © 2020, Springer Nature Switzerland AG. © 2020, Springer Nature Switzerland AG. 2020-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/faculty_research/3027 Faculty Research Work Animo Repository Computer vision Image processing Neural networks (Computer science) Visual perception Manufacturing |
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Computer vision Image processing Neural networks (Computer science) Visual perception Manufacturing Billones, Robert Kerwin C. Bandala, Argel A. Gan Lim, Laurence A. Sybingco, Edwin Fillone, Alexis M. Dadios, Elmer P. Visual percepts quality recognition using convolutional neural networks |
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In visual recognition systems, it is necessary to identify between good or bad quality images. Visual perceptions are discrete representation of observable objects. In typical systems, visual parameters are adjusted for optimal detection of good quality images. However, over a wide range of visual context scenarios, these parameters are usually not optimized. This study focused on the learning and detection of good and bad percepts from a given visual context using a convolutional neural network. The system utilized a perception-action model with memory and learning mechanism which is trained and validated in four different road traffic locations (DS0, DS3-1, DS4-1, DS4-3). The training accuracy for DS0, DS3-1, DS4-1, and DS4-3 are 93.53%, 91.16%, 93.39%, and 95.76%, respectively. The validation accuracy for DS0, DS3-1, DS4-1, and DS4-3 are 88.73%, 77.40%, 95.21%, and 83.56%, respectively. Based from these results, the system can adequately learn to differentiate between good or bad quality percepts. © 2020, Springer Nature Switzerland AG. © 2020, Springer Nature Switzerland AG. |
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Billones, Robert Kerwin C. Bandala, Argel A. Gan Lim, Laurence A. Sybingco, Edwin Fillone, Alexis M. Dadios, Elmer P. |
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Billones, Robert Kerwin C. Bandala, Argel A. Gan Lim, Laurence A. Sybingco, Edwin Fillone, Alexis M. Dadios, Elmer P. |
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Billones, Robert Kerwin C. |
title |
Visual percepts quality recognition using convolutional neural networks |
title_short |
Visual percepts quality recognition using convolutional neural networks |
title_full |
Visual percepts quality recognition using convolutional neural networks |
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Visual percepts quality recognition using convolutional neural networks |
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Visual percepts quality recognition using convolutional neural networks |
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visual percepts quality recognition using convolutional neural networks |
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Animo Repository |
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2020 |
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https://animorepository.dlsu.edu.ph/faculty_research/3027 |
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