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中国老年人口的快速增加,代表着中国的国家发展取得了成就和社会文明迈入新的阶段,同时带来了新的机遇和挑战.面对日益增长的老年人健康需求和即将到来的“银发经济”时代,市场上将更多地出现针对老年人的健康服务技术,如智能健康监测、辅助生活技术等.相关技术如何从基本的被动式健康服务进化到无须人工干预的更为智能化的管家式服务将成为未来“银发经济”市场角逐的关键.鉴于此,本文结合近来备受关注的以Deep Seek为代表的大语言模型,提出一个将具备自然语言理解能力的、生成式的人工智能技术引入到智慧家庭中的针对老年人健康监测和分析的技术框架,以提升服务的智能化水平,向实现人性化的人工智能管家目标迈进.
Abstract:The rapid growth of China's elderly population represents the achievements of China's national development and the entry of social civilization into a new stage, while bringing new opportunities and challenges. Facing the growing health needs of the elderly and the upcoming era of “silver economy”, more health service technologies for the elderly will appear in the market, such as intelligent health monitoring, assisted living technology, etc. How related technologies for the elderly evolve from basic passive health services to more intelligent butler services without human intervention will become the key to compete in the silver market in the future. In view of this, combined with the large language model represented by Deep Seek,which has attracted much attention recently, a technical framework is proposed for health monitoring and analysis of the elderly, which introduces the generative AI technology with natural language understanding ability into the smart home, so as to improve the intelligent level of service and move towards the goal of realizing the humanized AI Butler.
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基本信息:
中图分类号:TP18;D669.6
引用信息:
[1]江帆,吴守朴,姜大志.智慧家庭中老年人群的行为检测与健康评估系统的构建[J].汕头大学学报(自然科学版),2026,41(01):53-64.
基金信息:
广东省科技创新战略专项资助项目(STKJ2021005、STKJ202209002、STKJ2023076)
2026-02-15
2026-02-15