本文已被:浏览 663次 下载 1553次
Received:March 10, 2021 Revised:April 07, 2021
Received:March 10, 2021 Revised:April 07, 2021
中文摘要: 针对企业命名实体的识别任务的过程复杂、学科交叉、实时性差等难点, 提出了一种基于并行子空间优化的方法. 首先, 建立系统的目标-约束方程完成系统级优化; 其次, 再通过构建文字检测、文字识别两级模型, 并考虑现存不同模型的优缺点进行模型选择的方法对涉及学科进行并行优化; 随后, 再使用图像阈值、灰度化、霍夫变换等算法构建两级模型的衔接; 最后, 通过仿真实验, 验证了本文方法相比其他两级文字检测识别模型的识别准确率提高了9%, 推理速度提升约20%.
Abstract:Concerning the complicated process, interdisciplinarity, and poor real-time performance of enterprise named entity recognition, a method based on concurrent subspace optimization is proposed. First, a target-constrained equation of the system is established to complete system-level optimization; secondly, a two-level model of text detection and recognition is constructed, and the model is selected, considering the advantages and disadvantages of different existing models, to optimize the discipline in parallel; then, the connection of the two-level model is constructed with the image threshold, grayscale and Hoff transform; finally, simulation experiments verify that the recognition accuracy of this method is 9% higher than that of other two-level text detection and recognition models, and the speed increases by about 20%.
文章编号: 中图分类号: 文献标志码:
基金项目:
引用文本:
乔诗展,陈逸伦.基于并行子空间优化的企业命名实体识别.计算机系统应用,2021,30(12):262-267
QIAO Shi-Zhan,CHEN Yi-Lun.Enterprise Named Entity Recognition Based on Concurrent Subspace Optimization.COMPUTER SYSTEMS APPLICATIONS,2021,30(12):262-267
乔诗展,陈逸伦.基于并行子空间优化的企业命名实体识别.计算机系统应用,2021,30(12):262-267
QIAO Shi-Zhan,CHEN Yi-Lun.Enterprise Named Entity Recognition Based on Concurrent Subspace Optimization.COMPUTER SYSTEMS APPLICATIONS,2021,30(12):262-267