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帮你轻松解决知识管理——教师个人知识管理工具详解及推荐 被引量:1
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作者 陈宗枝 韦丽娟 《中国信息技术教育》 2009年第11期105-107,共3页
个人知识管理是老师提升自身专业知识和能力的重要途径之一,它能够有效促进教师的个人价值的提升。本期推介的个人知识管理工具各有特色,教师可以根据自己的需求选择使用,使这些工具有效地管理自己的知识数据库,并且通过交流分享的... 个人知识管理是老师提升自身专业知识和能力的重要途径之一,它能够有效促进教师的个人价值的提升。本期推介的个人知识管理工具各有特色,教师可以根据自己的需求选择使用,使这些工具有效地管理自己的知识数据库,并且通过交流分享的方式,创造出更多的知识,提升自身的价值。 展开更多
关键词 知识管理 管理工具 教师 详解 松解 知识数据库 专业知识 价值
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Anti-Occlusion Object Tracking Algorithm Based on Filter Prediction
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作者 陈坤 赵旭 +2 位作者 董春玉 邸子超 陈宗枝 《Journal of Shanghai Jiaotong university(Science)》 EI 2024年第3期400-413,共14页
Visual object tracking is an important issue that has received long-term attention in computer vision.The ability to effectively handle occlusion,especially severe occlusion,is an important aspect of evaluating the pe... Visual object tracking is an important issue that has received long-term attention in computer vision.The ability to effectively handle occlusion,especially severe occlusion,is an important aspect of evaluating the performance of object tracking algorithms in long-term tracking,and is of great significance to improving the robustness of object tracking algorithms.However,most object tracking algorithms lack a processing mechanism specifically for occlusion.In the case of occlusion,due to the lack of target information,it is necessary to predict the target position based on the motion trajectory.Kalman filtering and particle filtering can effectively predict the target motion state based on the historical motion information.A single object tracking method,called probabilistic discriminative model prediction(PrDiMP),is based on the spatial attention mechanism in complex scenes and occlusions.In order to improve the performance of PrDiMP,Kalman filtering,particle filtering and linear filtering are introduced.First,for the occlusion situation,Kalman filtering and particle filtering are respectively introduced to predict the object position,thereby replacing the detection result of the original tracking algorithm and stopping recursion of target model.Second,for detection-jump problem of similar objects in complex scenes,a linear filtering window is added.The evaluation results on the three datasets,including GOT-10k,UAV123 and LaSOT,and the visualization results on several videos,show that our algorithms have improved tracking performance under occlusion and the detection-jump is effectively suppressed. 展开更多
关键词 single object tracking occlusion Kalman filtering particle filtering linear filtering spatial attention mechanism
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