Effects of Cropping vs Resizing on the Performance of Brain Tumor Segmentation Models

This study investigated the effects of image resizing vs cropping on the performance of state-of-the-art models for the brain tumor segmentation task. This is particularly important since many studies simply resize the image without thinking about potential effects of image distortion on the model&#...

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Main Authors: Magboo, Ma Sheila A., Coronel, Andrei D
Format: text
Published: Archīum Ateneo 2024
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Online Access:https://archium.ateneo.edu/discs-faculty-pubs/429
https://doi.org/10.1109/CITS61189.2024.10608031
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Institution: Ateneo De Manila University
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spelling ph-ateneo-arc.discs-faculty-pubs-14312025-01-30T05:57:06Z Effects of Cropping vs Resizing on the Performance of Brain Tumor Segmentation Models Magboo, Ma Sheila A. Coronel, Andrei D This study investigated the effects of image resizing vs cropping on the performance of state-of-the-art models for the brain tumor segmentation task. This is particularly important since many studies simply resize the image without thinking about potential effects of image distortion on the model's segmentation performance. Since the objective of tumor segmentation is to predict the pixels that comprise the actual tumor, image cropping was performed in order to focus more on the brain and the tumor and not on the background. This conjecture was tested using state-of-the-art models namely 2D U-Net, 2D U- Net with VGG19 as backbone, 2D U-Net with InceptionV3 ad backbone, and 2D U-Net with InceptionResNetV2 as backbone. Three different configurations were designed for this purpose. The first configuration used resized images while the second configuration used cropped images. The third configuration used pretrained weights of models of trained on the resized images and then applied them on the cropped images. Overall, the top three models are 2D U-Net with InceptionResNetV2 as backbone trained using the resized images followed by 2D U-Net trained also using the resized images and then finally by 2D U-Net trained using the cropped images. As to why cropping did not perform well in this experiment, several plausible explanations were provided in this study. 2024-01-01T08:00:00Z text https://archium.ateneo.edu/discs-faculty-pubs/429 https://doi.org/10.1109/CITS61189.2024.10608031 Department of Information Systems & Computer Science Faculty Publications Archīum Ateneo 2D U-Net 2D U-Net InceptionResNetV2 brain tumor segmentation image cropping image resizing Computer Engineering Computer Sciences Engineering Physical Sciences and Mathematics
institution Ateneo De Manila University
building Ateneo De Manila University Library
continent Asia
country Philippines
Philippines
content_provider Ateneo De Manila University Library
collection archium.Ateneo Institutional Repository
topic 2D U-Net
2D U-Net InceptionResNetV2
brain tumor segmentation
image cropping
image resizing
Computer Engineering
Computer Sciences
Engineering
Physical Sciences and Mathematics
spellingShingle 2D U-Net
2D U-Net InceptionResNetV2
brain tumor segmentation
image cropping
image resizing
Computer Engineering
Computer Sciences
Engineering
Physical Sciences and Mathematics
Magboo, Ma Sheila A.
Coronel, Andrei D
Effects of Cropping vs Resizing on the Performance of Brain Tumor Segmentation Models
description This study investigated the effects of image resizing vs cropping on the performance of state-of-the-art models for the brain tumor segmentation task. This is particularly important since many studies simply resize the image without thinking about potential effects of image distortion on the model's segmentation performance. Since the objective of tumor segmentation is to predict the pixels that comprise the actual tumor, image cropping was performed in order to focus more on the brain and the tumor and not on the background. This conjecture was tested using state-of-the-art models namely 2D U-Net, 2D U- Net with VGG19 as backbone, 2D U-Net with InceptionV3 ad backbone, and 2D U-Net with InceptionResNetV2 as backbone. Three different configurations were designed for this purpose. The first configuration used resized images while the second configuration used cropped images. The third configuration used pretrained weights of models of trained on the resized images and then applied them on the cropped images. Overall, the top three models are 2D U-Net with InceptionResNetV2 as backbone trained using the resized images followed by 2D U-Net trained also using the resized images and then finally by 2D U-Net trained using the cropped images. As to why cropping did not perform well in this experiment, several plausible explanations were provided in this study.
format text
author Magboo, Ma Sheila A.
Coronel, Andrei D
author_facet Magboo, Ma Sheila A.
Coronel, Andrei D
author_sort Magboo, Ma Sheila A.
title Effects of Cropping vs Resizing on the Performance of Brain Tumor Segmentation Models
title_short Effects of Cropping vs Resizing on the Performance of Brain Tumor Segmentation Models
title_full Effects of Cropping vs Resizing on the Performance of Brain Tumor Segmentation Models
title_fullStr Effects of Cropping vs Resizing on the Performance of Brain Tumor Segmentation Models
title_full_unstemmed Effects of Cropping vs Resizing on the Performance of Brain Tumor Segmentation Models
title_sort effects of cropping vs resizing on the performance of brain tumor segmentation models
publisher Archīum Ateneo
publishDate 2024
url https://archium.ateneo.edu/discs-faculty-pubs/429
https://doi.org/10.1109/CITS61189.2024.10608031
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