Advances on robotic item picking : applications in warehousing & e-commerce fulfillment
著者
書誌事項
Advances on robotic item picking : applications in warehousing & e-commerce fulfillment
Springer, c2020
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注記
Includes bibliographical references
Other editors: Joseph Durham, Kris Hauser, Kei Okada, Alberto Rodriguez
内容説明・目次
内容説明
This book is a compilation of advanced research and applications on robotic item picking and warehouse automation for e-commerce applications. The works in this book are based on results that came out of the Amazon Robotics Challenge from 2015-2017, which focused on fully automated item picking in a warehouse setting, a topic that has been assumed too complicated to solve or has been reduced to a more tractable form of bin picking or single-item table top picking. The book's contributions reveal some of the top solutions presented from the 50 participant teams. Each solution works to address the time-constraint, accuracy, complexity, and other difficulties that come with warehouse item picking. The book covers topics such as grasping and gripper design, vision and other forms of sensing, actuation and robot design, motion planning, optimization, machine learning and artificial intelligence, software engineering, and system integration, among others. Through this book, the authors describe how robot systems are built from the ground up to do a specific task, in this case, item picking in a warehouse setting. The compiled works come from the best robotics research institutions and companies globally.
目次
Introduction.- The challenges of automated item picking: the last mile of logistics for e-commerce.- Robotic Sensing for Item Picking.- Gripper Design and Grasping Strategies.- Machine Learning for Item Identification and Pose Estimation.- Machine Learning for Motion Planning.- Efficient Task Planning Strategies.
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