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    Robot, can you say ‘cheese’?

    1-2页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – What would you do if you walked up to a robot with a human-like head and it smiledat you first? You’d likely smile ba ck and perhaps feel the two of you were genuinely interacting. But howdoes a ro bot know how to do this? Or a better question, how does it know to get you to sm ile back?

    Reports on Robotics Findings from South China University of Technology Provide N ew Insights (An Overview of Transfer Nursing Robot: Classification, Key Technolo gy, and Trend)

    2-3页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – Investigators publish new report on Ro botics. According to news reporting originatingfrom Guangzhou, People’s Republi c of China, by NewsRx correspondents, research stated, “The transfernursing rob ot plays a vital role in facilitating the movement of elderly individuals or pat ients who areunable to walk, aiding in transfers between beds, wheelchairs, and operating tables, among others. Giventhe current societal challenges posed by an aging population and a shortage of caregivers, transfer nursingrobots have g ained significant attention.”

    New Findings from Beijing Jiaotong University Update Understanding of Robotics ( Tracked Robot With Underactuated Tensiondriven Rrp Transformable Mechanism: Ide as and Design)

    3-4页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – Fresh data on Robotics are presented I n a new report. According to news reportingoriginating in Beijing, People’s Rep ublic of China, by NewsRx journalists, research stated, “Robots withtransformab le tracked mechanisms are widely used in complex terrains because of their high adaptability,and many studies on novel locomotion mechanisms have been conducte d to make them able to climbhigher obstacles. Developing underactuated transfor mable mechanisms for tracked robots could decreasethe number of actuators used while maintaining the flexibility and obstacle-crossing capability of these robots, and increasing their cost performance.”

    New Machine Learning Study Findings Have Been Reported by Investigators at Unive rsity of Nebraska (Applying Image Analysis and Machine Learning To Historical Ne wspaper Collections)

    4-4页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – A new study on Machine Learning is now available. According to news reportingoriginating in Lincoln, Nebraska, by New sRx journalists, research stated, “Diving below the surface has itschallenges, however. For example, ‘noise effects’ are especially widespread when digital ima ges have beencreated from earlier microphotographic copies, as is common in his torical newspaper collections.”

    Researchers from University of California San Francisco (UCSF) Report on Finding s in Artificial Intelligence (Assessing Supervisor Versus Trainee Viewpoints of Entrustment Through Cognitive and Affective Lenses: an Artificial Intelligence . ..)

    5-6页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – Research findings on Artificial Intell igence are discussed in a new report. Accordingto news reporting originating fr om San Francisco, California, by NewsRx correspondents, research stated,“The en trustment framework redirects assessment from considering only trainees’ compete nce to decisionmakingabout their readiness to perform clinical tasks independe ntly. Since trainees and supervisors bothcontribute to entrustment decisions, w e examined the cognitive and affective factors that underly theirnegotiation of trust, and whether trainee demographic characteristics may bias them.”

    New Machine Learning Findings from Royal Melbourne Institute of Technology - RMI T University Discussed (Machine Learningassisted Vibration Analysis of Graphene -origami Metamaterial Beams Immersed In Viscous Fluids)

    6-6页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – Investigators publish new report on Ma chine Learning. According to news reportingoriginating from Bundoora, Australia , by NewsRx correspondents, research stated, “This paper investigatesthe free a nd forced vibration behaviours of functionally graded graphene origamienabled au xetic metamaterial(FG-GOEAM) beams submerged in Newtonian fluids, with a partic ular focus on the understandingof the influence of negative Poisson’s ratio (NP R) on the natural frequencies and dynamic responses ofthe beam. To this end, a novel accurate and efficient machine learning-assisted model based on the genetic programming (GP) algorithm and theoretical formulations is proposed.”

    Soochow University Details Findings in Robotics (A Study of the Global Topologic al Map Construction Algorithm Based On Grid Map Representation for Multirobot)

    7-8页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews – Investigators discuss new findings in Robotics. A ccording to news originating from Jiangsu,People’s Republic of China, by NewsRx correspondents, research stated, “In some large environmentswhere humans and m achines coexist, such as smart factories, restaurants, and hotels, multiple mobi lerobots system have certain advantages over single mobile robot in terms of ta sk complexity, executionefficiency, and system robustness. However, path confli cts and blockages may occur among robots withouteffective global coordination m ethod, especially in some special areas like narrow straight roads (N-S-R)and c rossroads (C-R).”

    New Machine Translation Findings from University of Hassan 2 Reported (A Compara tive Study of Different Dimensionality Reduction Techniques for Arabic Machine T ranslation)

    8-9页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – Data detailed on Machine Translation h ave been presented. According to newsreporting from Casablanca, Morocco, by New sRx journalists, research stated, “Word embeddings arewidely deployed in a trem endous range of fundamental natural language processing applications and areals o useful for generating representations of paragraphs, sentences, and documents. In some contextsinvolving constrained memory, it may be beneficial to reduce t he size of word embeddings since theyrepresent a core component of several natu ral language processing tasks.”

    Findings from University of Essex Has Provided New Data on Machine Learning (Add ressing Modern and Practical Challenges In Machine Learning: a Survey of Online Federated and Transfer Learning)

    9-9页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – Research findings on Machine Learning are discussed in a new report. According to newsreporting originating in Essex, United Kingdom, by NewsRx journalists, research stated, “Online federatedlearn ing (OFL) and online transfer learning (OTL) are two collaborative paradigms for overcoming modernmachine learning challenges such as data silos, streaming dat a, and data security.”

    New Findings on Machine Learning from Shandong University Summarized (Sgad-gan: Simultaneous Generation and Anomaly Detection for Time-series Sensor Data With G enerative Adversarial Networks)

    10-10页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – Investigators publish new report on Ma chine Learning. According to news reportingoriginating in Qingdao, People’s Rep ublic of China, by NewsRx journalists, research stated, “In recentyears, mechan ical sensor data anomaly detection has gained much attention in the machine lear ning andmechanical fault warning fields. Limited by the fact that there is far less anomalous data available foranalysis than normal data, many machine learni ng methods fail to perform excellent detection results.”