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基于FlowNet2.0改进的运动人体识别研究
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作者 沈英杰 付江龙 +2 位作者 王剑雄 魏士磊 任一帅 《现代信息科技》 2024年第21期78-82,共5页
针对现有双流卷积神经网络由于运动中人体移动速度快,无法快速、准确地识别人体信息的问题,提出了一种基于FlowNet2.0网络改进的人体识别检测方法,通过给FlowNet2.0网络的各视频帧输入通道引入自注意力,能够有效增强网络对外观信息和姿... 针对现有双流卷积神经网络由于运动中人体移动速度快,无法快速、准确地识别人体信息的问题,提出了一种基于FlowNet2.0网络改进的人体识别检测方法,通过给FlowNet2.0网络的各视频帧输入通道引入自注意力,能够有效增强网络对外观信息和姿态特征的提取能力,从而更好地描述运动目标。最终该模型在HDBM51数据集上进行训练,实验结果表明,改进后的FlowNet2.0网络取得了显著的改进效果。此研究为解决动作时的人体识别问题提供了一种有效的解决方案。 展开更多
关键词 双流卷积神经网络 视频理解 运动目标 多注意力网络
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A multi-attention RNN-based relation linking approach for question answering over knowledge base 被引量:1
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作者 Li Huiying Zhao Man Yu Wenqi 《Journal of Southeast University(English Edition)》 EI CAS 2020年第4期385-392,共8页
Aiming at the relation linking task for question answering over knowledge base,especially the multi relation linking task for complex questions,a relation linking approach based on the multi-attention recurrent neural... Aiming at the relation linking task for question answering over knowledge base,especially the multi relation linking task for complex questions,a relation linking approach based on the multi-attention recurrent neural network(RNN)model is proposed,which works for both simple and complex questions.First,the vector representations of questions are learned by the bidirectional long short-term memory(Bi-LSTM)model at the word and character levels,and named entities in questions are labeled by the conditional random field(CRF)model.Candidate entities are generated based on a dictionary,the disambiguation of candidate entities is realized based on predefined rules,and named entities mentioned in questions are linked to entities in knowledge base.Next,questions are classified into simple or complex questions by the machine learning method.Starting from the identified entities,for simple questions,one-hop relations are collected in the knowledge base as candidate relations;for complex questions,two-hop relations are collected as candidates.Finally,the multi-attention Bi-LSTM model is used to encode questions and candidate relations,compare their similarity,and return the candidate relation with the highest similarity as the result of relation linking.It is worth noting that the Bi-LSTM model with one attentions is adopted for simple questions,and the Bi-LSTM model with two attentions is adopted for complex questions.The experimental results show that,based on the effective entity linking method,the Bi-LSTM model with the attention mechanism improves the relation linking effectiveness of both simple and complex questions,which outperforms the existing relation linking methods based on graph algorithm or linguistics understanding. 展开更多
关键词 question answering over knowledge base(KBQA) entity linking relation linking multi-attention bidirectional long short-term memory(Bi-LSTM) large-scale complex question answering dataset(LC-QuAD)
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