School of Computers, Guangdong University of Technology, Guangzhou, 510006, China.
Kunming Medical University, Chunrong Road West 1168, Chenggong District, Kunming, China.
Int J Legal Med. 2021 Nov;135(6):2519-2530. doi: 10.1007/s00414-021-02664-2. Epub 2021 Jul 20.
Diatom test is one of the commonly used diagnostic methods for drowning in forensic pathology, which provides supportive evidence for drowning. However, in forensic practice, it is time-consuming and laborious for forensic experts to classify and count diatoms, whereas artificial intelligence (AI) is superior to human experts in processing data and carrying out classification tasks. Some AI techniques have focused on searching diatoms and classifying diatoms. But, they either could not classify diatoms correctly or were time-consuming. Conventional detection deep network has been used to overcome these problems but failed to detect the occluded diatoms and the diatoms similar to the background heavily, which could lead to false positives or false negatives. In order to figure out the problems above, an improved region-based full convolutional network (R-FCN) with online hard example mining and the shape prior of diatoms was proposed. The online hard example mining (OHEM) was coupled with the R-FCN to boost the capacity of detecting the occluded diatoms and the diatoms similar to the background heavily and the priors of the shape of the common diatoms were explored and introduced to the anchor generation strategy of the region proposal network in the R-FCN to locate the diatoms precisely. The results showed that the proposed approach significantly outperforms several state-of-the-art methods and could detect the diatom precisely without missing the occluded diatoms and the diatoms similar to the background heavily. From the study, we could conclude that (1) the proposed model can locate the position and identify the genera of common diatoms more accurately; (2) this method can reduce the false positives or false negatives in forensic practice; and (3) it is a time-saving method and can be introduced.
硅藻测试是法医病理学中常用的溺水诊断方法之一,为溺水提供支持性证据。然而,在法医实践中,法医专家分类和计数硅藻既耗时又费力,而人工智能(AI)在处理数据和执行分类任务方面优于人类专家。一些 AI 技术专注于搜索和分类硅藻。但是,它们要么不能正确分类硅藻,要么耗时。传统的检测深度网络已被用于克服这些问题,但未能检测到严重遮挡的硅藻和与背景相似的硅藻,这可能导致假阳性或假阴性。为了解决上述问题,提出了一种带有在线硬例挖掘和硅藻形状先验的改进的基于区域的全卷积网络(R-FCN)。在线硬例挖掘(OHEM)与 R-FCN 相结合,提高了检测严重遮挡和与背景相似的硅藻的能力,并探索和引入了常见硅藻形状的先验知识,以 R-FCN 中的区域建议网络的锚生成策略,以精确定位硅藻。结果表明,所提出的方法明显优于几种最先进的方法,可以在不遗漏严重遮挡和与背景相似的硅藻的情况下,精确地检测到硅藻。从研究中可以得出结论:(1)所提出的模型可以更准确地定位位置并识别常见硅藻的属;(2)该方法可以减少法医实践中的假阳性或假阴性;(3)它是一种节省时间的方法,可以引入。