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基于实践能力培养的金融风险管理课程教学优化策略探索
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作者 方程与 陈冬冬 《金融界》 2025年第4期59-62,共4页
本文聚焦金融风险管理课程教学优化,深入剖析该课程与实践能力的紧密关联,系统阐述基于实践能力培养的教学优化意义,从教学方法、课程内容、实训平台等多维度提出具体优化策略,旨在为提升学生金融风险实战能力、推动课程体系革新及满足... 本文聚焦金融风险管理课程教学优化,深入剖析该课程与实践能力的紧密关联,系统阐述基于实践能力培养的教学优化意义,从教学方法、课程内容、实训平台等多维度提出具体优化策略,旨在为提升学生金融风险实战能力、推动课程体系革新及满足金融行业人才需求提供有效参考,助力院校打造专业特色教学品牌,服务社会经济稳健运行。 展开更多
关键词 实践能力 金融风险 课程教学
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A Survey of Camouflaged Object Detection and Beyond
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作者 Fengyang Xiao Sujie Hu +6 位作者 Yuqi Shen chengyu fang Jinfa Huang Longxiang Tang Ziyun Yang Xiu Li Chunming He 《CAAI Artificial Intelligence Research》 2024年第1期1-30,共30页
Camouflaged object detection(COD)refers to the task of identifying and segmenting objects that blend seamlessly into their surroundings,posing a significant challenge for computer vision systems.In recent years,COD ha... Camouflaged object detection(COD)refers to the task of identifying and segmenting objects that blend seamlessly into their surroundings,posing a significant challenge for computer vision systems.In recent years,COD has garnered widespread attention due to its potential applications in surveillance,wildlife conservation,autonomous systems,and more.While several surveys on COD exist,they often have limitations in terms of the number and scope of papers covered,particularly regarding the rapid advancements made in the field since mid-2023.To address this void,we present the most comprehensive review of COD to date,encompassing both theoretical frameworks and practical contributions to the field.This paper explores various COD methods across four domains,including both image-level and video-level solutions,from the perspectives of traditional and deep learning approaches.We thoroughly investigate the correlations between COD and other camouflaged scenario methods,thereby laying the theoretical foundation for subsequent analyses.Furthermore,we delve into novel tasks such as referring-based COD and collaborative COD,which have not been fully addressed in previous works.Beyond object-level detection,we also summarize extended methods for instance-level tasks,including camouflaged instance segmentation,counting,and ranking.Additionally,we provide an overview of commonly used benchmarks and evaluation metrics in COD tasks,conducting a comprehensive evaluation of deep learning-based techniques in both image and video domains,considering both qualitative and quantitative performance.Finally,we discuss the limitations of current COD models and propose 9 promising directions for future research,focusing on addressing inherent challenges and exploring novel,meaningful technologies.This comprehensive examination aims to deepen the understanding of COD models and related methods in camouflaged scenarios.For those interested,a curated list of CODrelated techniques,datasets,and additional resources can be found at https://github.com/ChunmingHe/awesome-concealed-objectsegmentation. 展开更多
关键词 camouflaged object detection camouflaged scenario understanding deep learning artificial intelligence
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