Textured Image Segmentation Using Deep LawsNet
dc.contributor.author | Benchikh, Ikram | |
dc.contributor.author | Kouadria, Houda | |
dc.date.accessioned | 2024-09-23T09:51:08Z | |
dc.date.available | 2024-09-23T09:51:08Z | |
dc.date.issued | 2024 | |
dc.description.abstract | In recent years, image analysis has become crucial across various fields, from medical diagnostics to autonomous vehicles. At the core of image analysis lies segmentation, a critical step that influences the performance of subsequent processes such as object detection and recognition. This study focuses on heart tumor segmentation in CT images using deep learning, particularly convolutional neural networks (CNNs). We utilized the U-Net architecture, renowned for its precision in medical image segmentation, and introduced a modified version called Law-Net, which incorporates Laws filters.Our work is divided into four chapters: an introduction to medical imaging and segmentation techniques, a detailed overview of U-Net architecture, an exploration of Laws filters and the modified U-Net, and an experimental analysis of our model's performance. By applying various segmentation evaluation metrics, we demonstrated the effectiveness of our approach in accurately detecting and segmenting heart tumors.The results indicate that our model, leveraging widely available data and optimized parameters, achieved high performance across all evaluation metrics. This confirms the potential of deep learning in aiding objective medical diagnoses and underscores its capacity to enhance the accuracy and efficiency of tumor detection in CT images. Our deep learning model holds promise for significantly improving the diagnostic process for medical professionals. | en_US |
dc.identifier.issn | MM/827 | |
dc.identifier.uri | http://10.10.1.6:4000/handle/123456789/5435 | |
dc.language.iso | en | en_US |
dc.publisher | UNIVERSITY BBA | en_US |
dc.title | Textured Image Segmentation Using Deep LawsNet | en_US |
dc.type | Thesis | en_US |
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- Today, image processing is becoming increasingly important. Many segmentation algorithms and models have been developed to analyze images obtained by any process. It is therefore essential to evaluate these segmentation methods in order to measure their performance. In this work, we used deep neural networks, specifically convolutional neural networks (CNNs), to automatically segment the tumor inside heart from CT images. On the theoretical side, we introduced the deep learning technique in the field of medical image segmentation in general. We explained the role of each one of these components in the image segmentation process, then we talked in detail about one of the most popular and widely used deep learning architectures for segmenting medical images (U-Net architecture). Also, we used a modified U- Net (Law-Net) by applying the Laws filters on our data’s images. On the experimental side, we implemented this architecture using various image segmentation evaluation metrics to automatically detect and segment the areas of the tumor. We noticed that the amount of data used to build the structure and some parameters played an important role in changing the performance of the decision model for automatic segmentation. Since the data used in this work is widely available, this made our built model achieve satisfactory results using various image segmentation evaluation metrics. A comparison between various image segmentation metrics of areas of tumor shows that all of these metrics perform very well. The results obtained in this work represent promising prospects for the possibility of using deep 51 learning to assist in an objective diagnosis of tumor through CT images of the heart. Finally, our deep learning model can make the job of medical expert easier in Today, image processing is becoming increasingly important. Many segmentation algorithms and models have been developed to analyze images obtained by any process. It is therefore essential to evaluate these segmentation methods in order to measure their performance. In this work, we used deep neural networks, specifically convolutional neural networks (CNNs), to automatically segment the tumor inside heart from CT images. On the theoretical side, we introduced the deep learning technique in the field of medical image segmentation in general. We explained the role of each one of these components in the image segmentation process, then we talked in detail about one of the most popular and widely used deep learning architectures for segmenting medical images (U-Net architecture). Also, we used a modified U- Net (Law-Net) by applying the Laws filters on our data’s images. On the experimental side, we implemented this architecture using various image segmentation evaluation metrics to automatically detect and segment the areas of the tumor. We noticed that the amount of data used to build the structure and some parameters played an important role in changing the performance of the decision model for automatic segmentation. Since the data used in this work is widely available, this made our built model achieve satisfactory results using various image segmentation evaluation metrics. A comparison between various image segmentation metrics of areas of tumor shows that all of these metrics perform very well. The results obtained in this work represent promising prospects for the possibility of using deep 51 learning to assist in an objective diagnosis of tumor through CT images of the heart. Finally, our deep learning model can make the job of medical expert easier in detecting tumor. tumor.
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