Enhanced U-Net Model for High Precision Retinal Vessel Segmentation

被引:0
|
作者
Zong, Yun [1 ]
Shao, Jiahao [1 ]
Liu, Zhao [1 ]
机构
[1] GuiLin Univ Elect Technol, Guilin, Peoples R China
关键词
Retinal Image Segmentation; U-Net; Vessel Lesion Segmentation;
D O I
10.1145/3644116.3644130
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The research presented in this study introduces a significantly enhanced version of the U-Net model, specifically tailored for the segmentation of retinal vessel images. Recognizing the complexity and delicacy of retinal imagery, our model incorporates a series of sophisticated modifications designed to optimize segmentation accuracy and efficiency. One of the key innovations in our model is the integration of residual blocks. These blocks are instrumental in overcoming the common issue of feature loss in deep neural networks. By facilitating the flow of information across different layers of the network, the residual blocks ensure that both high-level and low-level features are effectively captured and utilized, enhancing the model's ability to discern fine details in retinal images. Additionally, we have employed cascaded dilated convolutions within the model. This technique serves to expand the receptive field of the network's convolutional layers without increasing the number of parameters significantly. As a result, the model gains an enhanced ability to understand and interpret the broader context of the retinal images, which is crucial for accurate vessel segmentation, especially in areas with complex vascular structures. Another significant enhancement is the incorporation of attention mechanisms. These mechanisms are designed to focus the model's computational resources on the most relevant features within the retinal images. By prioritizing key semantic features, the attention mechanisms greatly improve the model's accuracy in distinguishing vessels from the surrounding tissue, a task that is particularly challenging in areas with lesions or other abnormalities. To further augment the model's performance, techniques were implemented to increase the size of the dataset used for training. A larger and more diverse dataset enables the model to learn from a wider range of examples, thereby improving its generalizability and robustness when faced with new, unseen images. This approach is crucial in a field where variability in retinal images is high due to factors such as age, health conditions, and image capture techniques. The effectiveness of these enhancements was rigorously tested using the CHASE dataset, a standard benchmark in the field of retinal image analysis. The model achieved an impressive accuracy rate of 98.2% on this dataset, a clear indication of its superior performance in segmenting retinal vessels. This high accuracy rate is particularly noteworthy given the complexity of the task and the challenges associated with segmenting fine and intricate vascular structures in the retina. Looking ahead, the study plans to extend this research to other types of retinal vessel lesion images. This expansion is crucial as it will allow for a more comprehensive understanding and improvement of the model's capabilities in dealing with a variety of retinal conditions. By applying the model to a broader range of retinal images, including those with different types of lesions and abnormalities, the research aims to further validate and refine the model's performance, potentially leading to wider clinical applications and advancements in the field of ophthalmology. This future work is expected to contribute significantly to the development of more accurate and reliable tools for diagnosing and monitoring retinal diseases.
引用
收藏
页码:69 / 73
页数:5
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