赌球者-嫩模赌球白富美世界杯

NJUPT Research Team from Key MOE Lab and School of Telecommunications Publishes Latest Findings in Nature Communications

文章來源:School of Telecommunications and Information Engineering Department of Science and Technology發布時間:2025-04-15瀏覽次數:542

  Recently, Dr. Gao Yun, a young faculty member from the Key Laboratory of Broadband Wireless Communication and Sensor Network Technology (Ministry of Education) and the School of Telecommunications and Information Engineering at Nanjing University of Posts and Telecommunications (NJUPT), has made significant research progress in the interdisciplinary field of communications, wearable technology, and artificial intelligence. The related findings, titled A Wearable Obstacle Avoidance Device for Visually Impaired Individuals with Cross-Modal Learning, has been published in the prestigious international journal Nature Communications.

NJUPT Research Team from Key MOE Lab and School of Telecommunications Publishes Latest Findings in Nature Communications

  Focusing on mobility assistance for visually impaired individuals, this study proposes a wearable obstacle avoidance device that integrates multimodal data processing and cross-modal learning, significantly improving reliability, response speed, battery life, and user-friendliness. According to the World Health Organization (WHO), over 1 billion people worldwide suffer from varying degrees of visual impairment or blindness, which severely impacts their daily mobility. While traditional aids like white canes and guide dogs provide some assistance, they have clear limitations in dealing with fast-moving or sudden obstacles. Guide dogs, in particular, are scarce and costly to train, limiting their widespread use. With advancements in sensor and AI technologies, smart wearable solutions have gained attention, but most existing devices struggle to balance high reliability, low latency, long battery life, and optimal user experience. 

  To address these challenges, the research team developed an innovative wearable device consisting of customized glasses and a smartphone, achieving breakthroughs in both theoretical methods and engineering implementation. Specifically: 

  For millisecond-level response, the glasses integrate multimodal sensors to capture real-time video and depth signals, while a depth-assisted video compression module reduces data transmission delays, ensuring accurate obstacle detection. 

  On the smartphone side, compressed multimodal signals undergo feature fusion and alignment via cross-modal learning, enhancing recognition accuracy and environmental adaptability. 

  To optimize power consumption, the team designed a computing architecture with multi-floating-point vector processing units, significantly improving efficiency and enabling extended battery life without compromising performance. 

Hardware components of the wearable obstacle avoidance device

  The Jiangsu Provincial Disabled Persons’ Federation provided strong support for real-world testing. This research was funded by the National Natural Science Foundation of China (NSFC) through major scientific research instrument development projects, key projects, and youth programs. 

 

(Author: Ye Siheng; Initial Review: Guo Yong’an, Dai Xiubin; Editor: Wang Cunhong; Approved by: Zhang Feng)



澳门百家乐官网下路写法| 至尊百家乐官网吕文婉| 百家乐官网注册开户送彩金| 巨星百家乐的玩法技巧和规则| 真人百家乐官网新开户送彩金| 大发888电脑版下载| 下三元八运24山详解| 金都国际| 太阳百家乐管理网| 24山来水吉凶| 澳门百家乐官网怎么赢钱| 德州扑克 玩法| 百家乐筹码币方形| 百家乐官网游戏试| 百家乐官网单跳投注法| 威尼斯人娱乐城优惠条件| 马牌百家乐娱乐城| 博盈百家乐官网游戏| 大发888娱乐真钱游戏 官方| 百家乐出千的方法| 24山向| ag百家乐官网下载| 皇冠百家乐官网代理网| 六合彩挂牌| 大发888真人真钱| 德州百家乐官网扑克桌| 百家乐官网特殊技巧| 百家乐官网最佳投注办法| 图木舒克市| 太阳城绿萱园| 新锦江百家乐娱乐场开户注册| 百家乐庄闲点数| 新锦江百家乐官网娱乐场开户注册| 百家乐官网概率怎么算| 兴山县| 安达市| 百家乐官网现实赌场| 奥斯卡娱乐城| 财神娱乐城| 湖北省| TT娱乐城投注,|