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Copula层次化变分推理
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作者 欧阳继红 曹竞月 王腾 《吉林大学学报(信息科学版)》 CAS 2024年第1期51-58,共8页
为提高Copula变分推理(CVI:Copula Variational Inference)的近似性能,提出了一种Copula层次化变分推理方法(CHVI:Copula Hierarchical Variational Inference)。该方法的主要思想是将CVI方法中的Copula函数与层次化变分模型(HVM:Hierar... 为提高Copula变分推理(CVI:Copula Variational Inference)的近似性能,提出了一种Copula层次化变分推理方法(CHVI:Copula Hierarchical Variational Inference)。该方法的主要思想是将CVI方法中的Copula函数与层次化变分模型(HVM:Hierarchical Variational Model)特殊的层次变分结构相结合,使HVM的变分先验服从CVI方法中的Copula函数。CHVI不但继承了CVI中的Copula函数较强的捕获变量相关性的能力,而且还继承了HVM的变分先验结构能获取模型隐变量依赖关系的优势,使CHVI可以更好地捕获隐变量之间的相关性,提高近似精度。利用基于经典的高斯混合模型验证CHVI方法,在合成数据集和实际应用数据集上的实验结果表明,CHVI方法的近似精度相较于CVI有较大提升。 展开更多
关键词 变分推理 COPULA函数 层次化 相关性
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改进多尺度特征的YOLO_v4目标检测方法 被引量:11
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作者 欧阳继红 王梓明 刘思光 《吉林大学学报(理学版)》 CAS 北大核心 2022年第6期1349-1355,共7页
针对YOLO_v4模型因颈部网络串行连接的特征会逐渐被稀释,从而影响模型性能的问题,提出一种改进多尺度特征的YOLO_v4目标检测方法.该方法通过引入中间层的方式重构了YOLO_v4颈部网络结构,再通过中间层参与后续特征融合实现特征跨级连接,... 针对YOLO_v4模型因颈部网络串行连接的特征会逐渐被稀释,从而影响模型性能的问题,提出一种改进多尺度特征的YOLO_v4目标检测方法.该方法通过引入中间层的方式重构了YOLO_v4颈部网络结构,再通过中间层参与后续特征融合实现特征跨级连接,并使用可通过网络学习的参数作为特征间的平衡因子进行特征加权融合.在数据集VOC-2007和VOC-2012上的实验结果表明,该方法可使模型平均精度提高1.3%,并可有效提升模型对不同目标的检测能力. 展开更多
关键词 目标检测 深度学习 多尺度特征 加权融合
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Underwater Object Recognition Based on Deep Encoding-Decoding Network 被引量:3
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作者 WANG Xinhua ouyang jihong +1 位作者 LI Dayu ZHANG Guang 《Journal of Ocean University of China》 SCIE CAS CSCD 2019年第2期376-382,共7页
Ocean underwater exploration is a part of oceanography that investigates the physical and biological conditions for scientific and commercial purposes. And video technology plays an important role and is extensively a... Ocean underwater exploration is a part of oceanography that investigates the physical and biological conditions for scientific and commercial purposes. And video technology plays an important role and is extensively applied for underwater environment observation. Different from the conventional methods, video technology explores the underwater ecosystem continuously and non-invasively. However, due to the scattering and attenuation of light transport in the water, complex noise distribution and lowlight condition cause challenges for underwater video applications including object detection and recognition. In this paper, we propose a new deep encoding-decoding convolutional architecture for underwater object recognition. It uses the deep encoding-decoding network for extracting the discriminative features from the noisy low-light underwater images. To create the deconvolutional layers for classification, we apply the deconvolution kernel with a matched feature map, instead of full connection, to solve the problem of dimension disaster and low accuracy. Moreover, we introduce data augmentation and transfer learning technologies to solve the problem of data starvation. For experiments, we investigated the public datasets with our proposed method and the state-of-the-art methods. The results show that our work achieves significant accuracy. This work provides new underwater technologies applied for ocean exploration. 展开更多
关键词 DEEP LEARNING transfer LEARNING encoding-decoding UNDERWATER OBJECT OBJECT recognition
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