{"title":"基于深度学习的无线胶囊内窥镜视频肿瘤检测的电子健康和资源管理方案","authors":"Tariq Rahim, Arslan Musaddiq, Dong-Seong Kim","doi":"10.1109/ICUFN49451.2021.9528627","DOIUrl":null,"url":null,"abstract":"Recently, a lot of concentration is on how early diagnosis for critical diseases can be accommodated with deep learning (DL). e-health is an emerging area in the junction of medical informatics, public health, and business, indicating health assistance and data delivered or improved by the Internet and associated technologies. Resource management as bandwidth allocation problem is a key problem while transmitting processed medical data where both data integrity and quality are of utmost importance. To address the early intelligent detection and diagnosis of the diseases, an end-to-end DL model i.e., You Only Look Once (YOLOv3-tiny) is selected for the detection of the tumor within with wireless capsule endoscopy videos. The DL mode is an improved version of the YOLOv3-tiny wherein each convolutional layer, different convolutional filters, is employed to extract both local and global features. The motivation is early detection of the critical disease followed by remote physician diagnosis where resource management as a bandwidth allocation is investigated using encoders like H.265/HEVC and VP9. The proposed scheme controls the frame rate, video resolution, and compression ratio as quantization based on the intelligent decision from the DL model. The performance of the improved YOLOv3-tiny model is benchmarked with YOLOv3-tiny and our previous work in terms of precision, sensitivity, F1-score, and F2-score. Furthermore, the resource management results are shown in terms of bandwidth and storage for both encoders.","PeriodicalId":318542,"journal":{"name":"2021 Twelfth International Conference on Ubiquitous and Future Networks (ICUFN)","volume":"40 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2021-08-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"2","resultStr":"{\"title\":\"e-Health and Resource Management Scheme for a Deep Learning-based Detection of Tumor in Wireless Capsule Endoscopy Videos\",\"authors\":\"Tariq Rahim, Arslan Musaddiq, Dong-Seong Kim\",\"doi\":\"10.1109/ICUFN49451.2021.9528627\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Recently, a lot of concentration is on how early diagnosis for critical diseases can be accommodated with deep learning (DL). e-health is an emerging area in the junction of medical informatics, public health, and business, indicating health assistance and data delivered or improved by the Internet and associated technologies. Resource management as bandwidth allocation problem is a key problem while transmitting processed medical data where both data integrity and quality are of utmost importance. To address the early intelligent detection and diagnosis of the diseases, an end-to-end DL model i.e., You Only Look Once (YOLOv3-tiny) is selected for the detection of the tumor within with wireless capsule endoscopy videos. The DL mode is an improved version of the YOLOv3-tiny wherein each convolutional layer, different convolutional filters, is employed to extract both local and global features. The motivation is early detection of the critical disease followed by remote physician diagnosis where resource management as a bandwidth allocation is investigated using encoders like H.265/HEVC and VP9. The proposed scheme controls the frame rate, video resolution, and compression ratio as quantization based on the intelligent decision from the DL model. 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引用次数: 2
摘要
最近,很多人都在关注如何利用深度学习(DL)来进行危重疾病的早期诊断。电子卫生是医学信息学、公共卫生和商业结合的新兴领域,表明通过互联网和相关技术提供或改进的卫生援助和数据。在医疗数据传输过程中,资源管理作为带宽分配问题是一个关键问题,数据的完整性和质量至关重要。为了解决疾病的早期智能检测和诊断,选择端到端深度学习模型,即You Only Look Once (YOLOv3-tiny),通过无线胶囊内窥镜视频检测内部肿瘤。DL模式是YOLOv3-tiny的改进版本,其中每个卷积层,不同的卷积滤波器,用于提取局部和全局特征。其动机是早期发现危重疾病,然后进行远程医生诊断,其中使用H.265/HEVC和VP9等编码器调查资源管理作为带宽分配。该方案基于深度学习模型的智能决策,对帧率、视频分辨率和压缩比进行量化控制。改进的YOLOv3-tiny模型在精度、灵敏度、F1-score和F2-score方面与YOLOv3-tiny模型和我们之前的工作进行了基准测试。此外,两种编码器的资源管理结果显示在带宽和存储方面。
e-Health and Resource Management Scheme for a Deep Learning-based Detection of Tumor in Wireless Capsule Endoscopy Videos
Recently, a lot of concentration is on how early diagnosis for critical diseases can be accommodated with deep learning (DL). e-health is an emerging area in the junction of medical informatics, public health, and business, indicating health assistance and data delivered or improved by the Internet and associated technologies. Resource management as bandwidth allocation problem is a key problem while transmitting processed medical data where both data integrity and quality are of utmost importance. To address the early intelligent detection and diagnosis of the diseases, an end-to-end DL model i.e., You Only Look Once (YOLOv3-tiny) is selected for the detection of the tumor within with wireless capsule endoscopy videos. The DL mode is an improved version of the YOLOv3-tiny wherein each convolutional layer, different convolutional filters, is employed to extract both local and global features. The motivation is early detection of the critical disease followed by remote physician diagnosis where resource management as a bandwidth allocation is investigated using encoders like H.265/HEVC and VP9. The proposed scheme controls the frame rate, video resolution, and compression ratio as quantization based on the intelligent decision from the DL model. The performance of the improved YOLOv3-tiny model is benchmarked with YOLOv3-tiny and our previous work in terms of precision, sensitivity, F1-score, and F2-score. Furthermore, the resource management results are shown in terms of bandwidth and storage for both encoders.