| Literature DB >> 32376534 |
Jiehang Deng1,2, Dongdong He1, Jiahong Zhuo1, Jian Zhao3, Cheng Xiao3,4, Xiaodong Kang3, Sunlin Hu5, Guosheng Gu1, Chao Liu3.
Abstract
ObjectiveWe propose a deep learning network-based method for recognizing and locating diatom targets with interference by complex background in autopsy.MethodThe system consisted of two modules: the preliminary positioning module and the accurate positioning module. In preliminary positioning, ZFNet convolution and pooling were utilized to extract the high-level features, and Regional Proposal Network (RPN) was applied to generate the regions where the diatoms may exist. In accurate positioning, Fast R-CNN was used to modify the position information and identify the types of the diatoms.ResultsWe compared the proposed method with conventional machine learning methods using a self-built database of images with interference by simple, moderate and complex backgrounds. The conventional methods showed a recognition rate of diatoms against partial background interference of about 60%, and failed to recognize or locate the diatom objects in the datasets with complex background interference. The deep learning network-based method effectively recognized and located the diatom targets against complex background interference with an average recognition rate reaching 85%.ConclusionThe proposed method can be applied for recognition and location of diatom targets against complex background interference in autopsy.Entities:
Keywords: complex background; deep learning; diatom; machine learning; object detection
Mesh:
Year: 2020 PMID: 32376534 PMCID: PMC7086121 DOI: 10.12122/j.issn.1673-4254.2020.02.08
Source DB: PubMed Journal: Nan Fang Yi Ke Da Xue Xue Bao ISSN: 1673-4254