{"id":1126062,"date":"2024-06-15T19:52:02","date_gmt":"2024-06-15T23:52:02","guid":{"rendered":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/uncategorized\/helping-robots-grasp-the-unpredictable-the-good-men-project\/"},"modified":"2024-06-15T19:52:02","modified_gmt":"2024-06-15T23:52:02","slug":"helping-robots-grasp-the-unpredictable-the-good-men-project","status":"publish","type":"post","link":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/robotics\/helping-robots-grasp-the-unpredictable-the-good-men-project\/","title":{"rendered":"Helping Robots Grasp the Unpredictable &#8211; The Good Men Project"},"content":{"rendered":"<p><p>    By Alex Shipps | MIT CSAIL | MIT News  <\/p>\n<p>    When robots come across unfamiliar objects, they struggle to    account for a simple truth: Appearances arent everything. They    may attempt to grasp a block, only to find out its    aliteral piece of cake. The    misleading appearance of that object could lead the robot to    miscalculate physical properties like the objects weight and    center of mass, using the wrong grasp and applying more force    than needed.  <\/p>\n<p>    To see through this illusion, MIT Computer Science and    Artificial Intelligence Laboratory (CSAIL) researchers designed    theGrasping Neural Process, a    predictive physics model capable of inferring these hidden    traits in real time for more intelligent robotic grasping.    Based on limited interaction data, their deep-learning system    can assist robots in domains like warehouses and households at    a fraction of the computational cost of previous algorithmic    and statistical models.  <\/p>\n<p>    The Grasping Neural Process is trained to infer invisible    physical properties from a history of attempted grasps, and    uses the inferred properties to guess which grasps would work    well in the future. Prior models often only identified robot    grasps from visual data alone.  <\/p>\n<p>    Typically, methods that infer physical properties build on    traditional statistical methods that require many known grasps    and a great amount of computation time to work well. The    Grasping Neural Process enables these machines to execute good    grasps more efficiently by using far less interaction data and    finishes its computation in less than a tenth of a second, as    opposed seconds (or minutes) required by traditional methods.  <\/p>\n<p>    The researchers note that the Grasping Neural Process thrives    in unstructured environments like homes and warehouses, since    both house a plethora of unpredictable objects. For example, a    robot powered by the MIT model could quickly learn how to    handle tightly packed boxes with different food quantities    without seeing the inside of the box, and then place them where    needed. At a fulfillment center, objects with different    physical properties and geometries would be placed in the    corresponding box to be shipped out to customers.  <\/p>\n<p>    Trained on 1,000 unique geometries and 5,000 objects, the    Grasping Neural Process achieved stable grasps in simulation    for novel 3D objects generated in the ShapeNet repository.    Then, the CSAIL-led group tested their model in the physical    world via two weighted blocks, where their work outperformed a    baseline that only considered object geometries. Limited to 10    experimental grasps beforehand, the robotic arm successfully    picked up the boxes on 18 and 19 out of 20 attempts apiece,    while the machine only yielded eight and 15 stable grasps when    unprepared.  <\/p>\n<p>    While less theatrical than an actor, robots that complete    inference tasks also have a three-part act to follow: training,    adaptation, and testing. During the training step, robots    practice on a fixed set of objects and learn how to infer    physical properties from a history of successful (or    unsuccessful) grasps. The new CSAIL model amortizes the    inference of the objects physics, meaning it trains a neural    network to learn to predict the output of an otherwise    expensive statistical algorithm. Only a single pass through a    neural network with limited interaction data is needed to    simulate and predict which grasps work best on different    objects.  <\/p>\n<p>    Then, the robot is introduced to an unfamiliar object during    the adaptation phase. During this step, the Grasping Neural    Process helps a robot experiment and update its position    accordingly, understanding which grips would work best. This    tinkering phase prepares the machine for the final step:    testing, where the robot formally executes a task on an item    with a new understanding of its properties.  <\/p>\n<p>    As an engineer, its unwise to assume a robot knows all the    necessary information it needs to grasp successfully, says    lead author Michael Noseworthy, an MIT PhD student in    electrical engineering and computer science (EECS) and CSAIL    affiliate. Without humans labeling the properties of an    object, robots have traditionally needed to use a costly    inference process. According to fellow lead author, EECS PhD    student, and CSAIL affiliate Seiji Shaw, their Grasping Neural    Process could be a streamlined alternative: Our model helps    robots do this much more efficiently, enabling the robot to    imagine which grasps will inform the best result.  <\/p>\n<p>    To get robots out of controlled spaces like the lab or    warehouse and into the real world, they must be better at    dealing with the unknown and less likely to fail at the    slightest variation from their programming. This work is a    critical step toward realizing the full transformative    potential of robotics, says Chad Kessens, an autonomous    robotics researcher at the U.S. Armys DEVCOM Army Research    Laboratory, which sponsored the work.  <\/p>\n<p>    While their model can help a robot infer hidden static    properties efficiently, the researchers would like to augment    the system to adjust grasps in real time for multiple tasks and    objects with dynamic traits. They envision their work    eventually assisting with several tasks in a long-horizon plan,    like picking up a carrot and chopping it. Moreover, their model    could adapt to changes in mass distributions in less static    objects, like when you fill up an empty bottle.  <\/p>\n<p>    Joining the researchers on the paper is Nicholas Roy, MIT    professor of aeronautics and astronautics and CSAIL member, who    is a senior author. The group recentlypresented this workat    the IEEE International Conference on Robotics and Automation.  <\/p>\n<\/p>\n<p>    Reprinted with permission of MIT News  <\/p>\n<p>    ***  <\/p>\n<p>      All Premium Members get to view The Good Men Project with NO      ADS. A $50 annual membership gives you an all access pass.      You can be a part of every call, group, class and community.      A $25 annual membership gives you access to one class, one      Social Interest group and our online communities. A $12      annual membership gives you access to our Friday calls with      the publisher, our online community.  Need      more info? A complete list of benefits is      here.    <\/p>\n<\/p>\n<p>    Photo credit: unsplash  <\/p>\n<p><!-- Auto Generated --><\/p>\n<p>Here is the original post: <\/p>\n<p><a target=\"_blank\" rel=\"nofollow noopener\" href=\"https:\/\/goodmenproject.com\/featured-content\/helping-robots-grasp-the-unpredictable\/\" title=\"Helping Robots Grasp the Unpredictable - The Good Men Project\">Helping Robots Grasp the Unpredictable - The Good Men Project<\/a><\/p>\n","protected":false},"excerpt":{"rendered":"<p> By Alex Shipps | MIT CSAIL | MIT News When robots come across unfamiliar objects, they struggle to account for a simple truth: Appearances arent everything. They may attempt to grasp a block, only to find out its aliteral piece of cake.  <a href=\"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/robotics\/helping-robots-grasp-the-unpredictable-the-good-men-project\/\">Continue reading <span class=\"meta-nav\">&rarr;<\/span><\/a><\/p>\n","protected":false},"author":1,"featured_media":0,"comment_status":"closed","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[187746],"tags":[],"class_list":["post-1126062","post","type-post","status-publish","format-standard","hentry","category-robotics"],"_links":{"self":[{"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/posts\/1126062"}],"collection":[{"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/comments?post=1126062"}],"version-history":[{"count":0,"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/posts\/1126062\/revisions"}],"wp:attachment":[{"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/media?parent=1126062"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/categories?post=1126062"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/tags?post=1126062"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}