Deep Learning For Minimally Invasive Computer Assisted Surgery

Aravinth Sivarasa, Oday D. Jerew
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引用次数: 0

Abstract

Detection of surgical instrument has been implemented in minimally invasive computer assisted surgery domain but detection of desired parts of surgical instrument has not been implemented properly. Previous researches have divided surgical instrument into two parts: End-effector and Shaft [12], which are not adequate to detect the components clearly. In this paper, we propose solution to improve accuracy and processing time of instrument detection. The novel detection has been implemented using deep learning algorithms-Convolutional Neural Network (CNN). The CNN uses kernel to perform feature extraction. The feature extraction includes convolution, batch normalisation, ReLu, max pooling and drop. In addition, selective kernel has been used during convolution to detect the parts of surgical instrument. There are four different types of datasets have been used for the execution. The proposed solution has giving promised results as there are nearly 2% improvement in accuracy and nearly 2s drop-in processing time. ReLu activation in convolution network and 20% dropout from output of convolution, not only reduces the processing time but also improved accuracy of detection.
微创计算机辅助手术的深度学习
手术器械的检测已经在微创计算机辅助手术领域得到了实现,但对手术器械所需部件的检测还没有得到很好的实现。以往的研究将手术器械分为末端执行器(End-effector)和轴(Shaft)两部分[12],不足以清晰地检测其组成部分。本文提出了提高仪器检测精度和处理时间的解决方案。这种新的检测方法是使用深度学习算法卷积神经网络(CNN)来实现的。CNN使用内核进行特征提取。特征提取包括卷积、批处理归一化、ReLu、最大池化和drop。此外,在卷积过程中还使用了选择性核来检测手术器械的部件。执行过程中使用了四种不同类型的数据集。提出的解决方案取得了预期的效果,精度提高了近2%,处理时间缩短了近25分钟。在卷积网络中激活ReLu和卷积输出中20%的dropout,不仅减少了处理时间,而且提高了检测的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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