The traditional manual age estimation method is crucial labor based on many kinds of the X-Ray image. Some current studies have shown that lateral cephalometric(LC) images can be used to estimate age. However, these methods are based on manually measuring some image features and making age estimates based on experience or scoring. Therefore, these methods are time-consuming and labor-intensive, and the effect will be affected by subjective opinions. In this work, we propose a saliency map-enhanced age estimation method, which can automatically perform age estimation based on LC images. Meanwhile, it can also show the importance of each region in the image for age estimation, which undoubtedly increases the method's Interpretability. Our method was tested on 3014 LC images from 4 to 40 years old. The MEA of the experimental result is 1.250, which is less than the result of the state-of-the-art benchmark because it performs significantly better in the age group with fewer data. Besides, our model is trained in each area with a high contribution to age estimation in LC images, so the effect of these different areas on the age estimation task was verified. Consequently, we conclude that the proposed saliency map enhancements chronological age estimation method of lateral cephalometric radiographs can work well in chronological age estimation task, especially when the amount of data is small. Besides, compared with traditional deep learning, our method is also interpretable.
翻译:传统的手工年龄估计方法基于X- Ray 图像的许多种类的X- Ray 图像,是关键劳动力。 某些当前的研究表明, 横向脑成像( LC) 图像可以用来估计年龄。 然而, 这些方法是基于人工测量一些图像特征, 并根据经验或评分进行年龄估计。 因此, 这些方法耗费时间和劳力,影响会受到主观观点的影响。 在这项工作中, 我们提出了一个显著的地图强化年龄估计方法, 可以自动根据 LC 图像进行年龄估计。 同时, 它还可以显示年龄估计图像中每个区域的重要性, 这无疑会增加方法的可解释性。 我们的方法是以3014 LC 图像为基础, 并根据经验或评分进行年龄估计。 因此, 实验结果为1. 250, 低于最先进的基准, 因为它在年龄组中表现得更好, 数据较少。 此外, 我们的模型在每一个领域都得到了培训,对LC 年龄估计有很高的贡献, 因此这些不同区域对年龄估计的影响, 与历史对比的精确度任务相比, 也就是在时间轴上的数据推估测测算方法中, 我们的结论是, 。