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A Signal Recognition Algorithm Based on Compressive Sensing and Improved Residual Network at Airport Terminal Area 被引量:1
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作者 SHEN Zhiyuan LI Jia +1 位作者 WANG Qianqian HU Yingying 《Transactions of Nanjing University of Aeronautics and Astronautics》 EI CSCD 2021年第4期607-615,共9页
It is particular important to identify the pattern of communication signal quickly and accurately at the airport terminal area with the increasing number of radio equipments.A signal modulation pattern recognition met... It is particular important to identify the pattern of communication signal quickly and accurately at the airport terminal area with the increasing number of radio equipments.A signal modulation pattern recognition method based on compressive sensing and improved residual network is proposed in this work.Firstly,the compressive sensing method is introduced in the signal preprocessing process to discard the redundant components for sampled signals.And the compressed measurement signals are taken as the input of the network.Furthermore,based on a scaled exponential linear units activation function,the residual unit and the residual network are constructed in this work to solve the problem of long training time and indistinguishable sample similar characteristics.Finally,the global residual is introduced into the training network to guarantee the convergence of the network.Simulation results show that the proposed method has higher recognition efficiency and accuracy compared with the state-of-the-art deep learning methods. 展开更多
关键词 compressed sensing deep learning residual network modulation recognition
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A survey of deep learning-based visual question answering 被引量:1
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作者 HUANG Tong-yuan YANG Yu-ling YANG Xue-jiao 《Journal of Central South University》 SCIE EI CAS CSCD 2021年第3期728-746,共19页
With the warming up and continuous development of machine learning,especially deep learning,the research on visual question answering field has made significant progress,with important theoretical research significanc... With the warming up and continuous development of machine learning,especially deep learning,the research on visual question answering field has made significant progress,with important theoretical research significance and practical application value.Therefore,it is necessary to summarize the current research and provide some reference for researchers in this field.This article conducted a detailed and in-depth analysis and summarized of relevant research and typical methods of visual question answering field.First,relevant background knowledge about VQA(Visual Question Answering)was introduced.Secondly,the issues and challenges of visual question answering were discussed,and at the same time,some promising discussion on the particular methodologies was given.Thirdly,the key sub-problems affecting visual question answering were summarized and analyzed.Then,the current commonly used data sets and evaluation indicators were summarized.Next,in view of the popular algorithms and models in VQA research,comparison of the algorithms and models was summarized and listed.Finally,the future development trend and conclusion of visual question answering were prospected. 展开更多
关键词 computer vision natural language processing visual question answering deep learning attention mechanism
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小球在竖直面内四分之一光滑圆周上的运动时间的深度研究 被引量:1
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作者 骆书院 李力 周思媛 《物理教学》 北大核心 2021年第7期61-62,共2页
不少高中物理试题的命制会涉及小球在竖直面内四分之一光滑圆周上的运动时间。由于需要积分运算才能得到这一关键数据,所以其设置必须与其他数据自洽才不会发生科学性错误。本文指出在一般情况下该运动时间的求解必然用到第一类椭圆积分... 不少高中物理试题的命制会涉及小球在竖直面内四分之一光滑圆周上的运动时间。由于需要积分运算才能得到这一关键数据,所以其设置必须与其他数据自洽才不会发生科学性错误。本文指出在一般情况下该运动时间的求解必然用到第一类椭圆积分,仅在特殊条件下可用普通积分解决,绝非有的文献作者以为凭借"灵机一动"的顿悟便可用普通积分求解。可见命题者应该对一般情况有深度的学习和研究,熟悉相关数理背景知识,做到"心中有数"才能游刃有余。 展开更多
关键词 物理试题命 制深度学习 第一类椭圆积分
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Attention-based encoder-decoder model for answer selection in question answering 被引量:11
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作者 Yuan-ping NIE Yi HAN +2 位作者 Jiu-ming HUANG Bo JIAO Ai-ping LI 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2017年第4期535-544,共10页
One of the key challenges for question answering is to bridge the lexical gap between questions and answers because there may not be any matching word between them. Machine translation models have been shown to boost ... One of the key challenges for question answering is to bridge the lexical gap between questions and answers because there may not be any matching word between them. Machine translation models have been shown to boost the performance of solving the lexical gap problem between question-answer pairs. In this paper, we introduce an attention-based deep learning model to address the answer selection task for question answering. The proposed model employs a bidirectional long short-term memory (LSTM) encoder-decoder, which has been demonstrated to be effective on machine translation tasks to bridge the lexical gap between questions and answers. Our model also uses a step attention mechanism which allows the question to focus on a certain part of the candidate answer. Finally, we evaluate our model using a benchmark dataset and the results show that our approach outperforms the existing approaches. Integrating our model significantly improves the performance of our question answering system in the TREC 2015 LiveQA task. 展开更多
关键词 Question answering Answer selection ATTENTION Deep learning
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