A New Object Detection Algorithm Based on YOLOv3 for Lung Nodules

Kejia Xu, Hong Jiang, Wen-Gen Tang
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引用次数: 5

Abstract

Lung cancer has always threatened people's health and life. Lung nodules, as early features of lung cancer, have very important clinical significance and research value for the diagnosis of lung cancer. The features captured by the traditional convolutional neural network are limited, in addition, traditional YOLO method has the problems of low accuracy and inaccurate positioning. Aiming at this problem, this paper proposes a new algorithm based on YOLOv3 for detecting lung nodules. The Inception ResBlocks are added to the feature network of YOLOv3, so that the network can extract richer feature information, furthermore, a new bounding box regression loss function is proposed. The loss function GDIoU loss makes the prediction of bounding box regression more accurate and further improves the performance of lung nodule detection. After experimental verification, the AP of this model can reach 83.5%, and the sensitivity can reach 92.6%. The proposed method has a good performance in terms of positioning accuracy and detection rate, and can avoid the problems of false detection and missed detection to a certain extent. It provides a new idea for the detection of lung nodules.
基于YOLOv3的肺结节目标检测新算法
肺癌一直威胁着人们的健康和生命。肺结节作为肺癌的早期特征,对肺癌的诊断具有非常重要的临床意义和研究价值。传统的卷积神经网络捕获的特征是有限的,而且传统的YOLO方法存在精度低和定位不准确的问题。针对这一问题,本文提出了一种基于YOLOv3的肺结节检测新算法。在YOLOv3的特征网络中加入Inception ResBlocks,使网络能够提取更丰富的特征信息,并提出了一种新的边界盒回归损失函数。损失函数GDIoU损失使得边界盒回归的预测更加准确,进一步提高了肺结节检测的性能。经实验验证,该模型的AP可达83.5%,灵敏度可达92.6%。所提出的方法在定位精度和检测率方面都具有良好的性能,并且在一定程度上避免了误检和漏检的问题。为肺结节的检测提供了新的思路。
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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