Faster R-CNN Based Cephalometric Landmarks Detection

L. C. Tabata, Clement N. Nyirenda
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Abstract

The objective of this study is to identify cephalometric landmarks on 2D cephalograms (X-rays) using a two-stage Artificial Intelligence (AI) based object detection method. The proposed work implements a Faster Region-based Convolutional Neural Network (Faster R-CNN), a deep-neural network, which consists of a 50 layered Residual Network (ResNet50) with Feature Pyramid Network (FPN) as a backbone network. The algorithm is trained and tested on a dataset presented in the IEEE International Symposium on Biomedical Imaging Challenge (ISBI-2015). The detection was based on the algorithm’s performance, in terms of mean error and the success rate under the clinically accepted accuracy range of 2 mm. The hypothesis behind this work was that Faster R-CNN will have a difficulty in detecting the landmarks due to either fuzzy features and, or low-resolution representations, but with help of FPN, the performance might be better. Results show that the model achieves approximately 90% and 0.9 mm in terms success rate and mean error respectively. In terms of future work, there is still a need to improve Faster R-CNN performance by increasing or modifying the dataset. Furthermore, the use of a more powerful computational platform would lead to faster training time, which would give room to the implementation of optimization algorithms of the hyper parameters by using evolutionary computation methods.
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更快的基于R-CNN的头部测量地标检测
本研究的目的是使用一种基于两阶段人工智能(AI)的物体检测方法来识别二维脑电图(x射线)上的头部测量标志。提出的工作实现了一种更快的基于区域的卷积神经网络(Faster R-CNN),这是一种深度神经网络,它由50层残差网络(ResNet50)和特征金字塔网络(FPN)作为骨干网络组成。该算法在IEEE国际生物医学成像挑战研讨会(ISBI-2015)上提出的数据集上进行了训练和测试。检测是基于算法的性能,即平均误差和成功率,在临床可接受的精度范围为2mm。这项工作背后的假设是,由于模糊特征和低分辨率表示,更快的R-CNN在检测地标方面会有困难,但在FPN的帮助下,性能可能会更好。结果表明,该模型的成功率约为90%,平均误差约为0.9 mm。就未来的工作而言,仍然需要通过增加或修改数据集来提高更快的R-CNN性能。此外,使用更强大的计算平台将导致更快的训练时间,这将为利用进化计算方法实现超参数优化算法提供空间。
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