智能手机远程伤口网络下慢性伤口图像传输压缩技术性能分析

Chinmay Chakraborty
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引用次数: 15

摘要

慢性创面的愈合状况对监测创面状况具有重要意义。本文设计并讨论了在远程绕线网络(TWN)系统下启用智能手机的压缩技术的实现。目前,临床数据处理对内存和带宽的需求很大。使用智能手机通过元数据应用程序页面捕获伤口图像。然后,使用分层树(SPIHT)压缩算法对数据进行压缩并发送到远程医疗集线器。然后可以减少传输图像,随后提高分割精度和灵敏度。更好的伤口愈合治疗取决于分割和分类的准确性。在远程医疗框架下,对该框架进行了速率(比特每像素)、压缩比、峰值信噪比、传输时间、均方误差和诊断质量等方面的评估。SPIHT压缩技术辅助的YDbDr-Fuzzy c-means聚类大大减少了执行时间(105秒),实现简单,节省内存(18 KB),提高了分割精度(98.39%),并且比不使用SPIHT产生更好的结果。该结果有利于开发一种实用的智能手机远程医疗系统,并显示出在未来临床评估和慢性伤口管理领域实施的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Analysis of Compression Techniques for Chronic Wound Image Transmission Under Smartphone-Enabled Tele-Wound Network
The healing status of chronic wounds is important for monitoring the condition of the wounds. This article designs and discusses the implementation of smartphone-enabled compression technique under a tele-wound network (TWN) system. Nowadays, there is a huge demand for memory and bandwidth savings for clinical data processing. Wound images are captured using a smartphone through a metadata application page. Then, they are compressed and sent to the telemedical hub with a set partitioning in hierarchical tree (SPIHT) compression algorithm. The transmitted image can then be reduced, followed by an improvement in the segmentation accuracy and sensitivity. Better wound healing treatment depends on segmentation and classification accuracy. The proposed framework is evaluated in terms of rates (bits per pixel), compression ratio, peak signal to noise ratio, transmission time, mean square error and diagnostic quality under telemedicine framework. A SPIHT compression technique assisted YDbDr-Fuzzy c-means clustering considerably reduces the execution time (105s), is simple to implement, saves memory (18 KB), improves segmentation accuracy (98.39%), and yields better results than the same without using SPIHT. The results favor the possibility of developing a practical smartphone-enabled telemedicine system and show the potential for being implemented in the field of clinical evaluation and the management of chronic wounds in the future.
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