<node id="622836">
  <nid>622836</nid>
  <type>event</type>
  <uid>
    <user id="28475"><![CDATA[28475]]></user>
  </uid>
  <created>1561668188</created>
  <changed>1561668188</changed>
  <title><![CDATA[PhD Dissertation Defense - Mustafa Mukadam]]></title>
  <body><![CDATA[<p><strong>Title:</strong>&nbsp;Structured Learning and Inference for Robot Motion Generation</p>

<p><strong>Committee:</strong></p>

<p>Dr. Byron Boots (Advisor), School of Interactive Computing, Georgia Institute of Technology</p>

<p>Dr. Frank Dellaert, School of Interactive Computing, Georgia Institute of Technology</p>

<p>Dr. Sonia Chernova, School of Interactive Computing, Georgia Institute of Technology</p>

<p>Dr. Evangelos Theodorou, School of Aerospace Engineering, Georgia Institute of Technology</p>

<p>Dr. Nathan Ratliff, Seattle Robotics Lab, NVIDIA Research</p>

<p><strong>Abstract:</strong></p>

<p>The ability to generate motions that accomplish desired tasks is fundamental to any robotic system. Robots must be able to generate such motions in a safe and feasible manner, sufficiently quickly, and in dynamic and uncertain environments. In addressing these problems, there exists a dichotomy between traditional methods and modern learning-based approaches. Often both of these paradigms exhibit complementary strengths and weaknesses, for example, while the former are interpretable and integrate prior knowledge, the latter are data-driven and flexible to design. In this thesis, I present two techniques for robot motion generation that exploit structure to bridge this gap and leverage the best of both worlds to efficiently find solutions in real-time. The first technique is a planning as inference framework that encodes structure through probabilistic graphical models, and the second technique is a reactive policy synthesis framework that encodes structure through task-map trees. Within both frameworks, I present two strategies that use said structure as a canvas to incorporate learning in a manner that is generalizable and interpretable while maintaining constraints like safety even during learning.</p>
]]></body>
  <field_summary_sentence>
    <item>
      <value><![CDATA[Structured Learning and Inference for Robot Motion Generation]]></value>
    </item>
  </field_summary_sentence>
  <field_summary>
    <item>
      <value><![CDATA[]]></value>
    </item>
  </field_summary>
  <field_time>
    <item>
      <value><![CDATA[2019-07-10T15:00:00-04:00]]></value>
      <value2><![CDATA[2019-07-10T17:00:00-04:00]]></value2>
      <rrule><![CDATA[]]></rrule>
      <timezone><![CDATA[America/New_York]]></timezone>
    </item>
  </field_time>
  <field_fee>
    <item>
      <value><![CDATA[]]></value>
    </item>
  </field_fee>
  <field_extras>
      </field_extras>
  <field_audience>
          <item>
        <value><![CDATA[Faculty/Staff]]></value>
      </item>
          <item>
        <value><![CDATA[Public]]></value>
      </item>
          <item>
        <value><![CDATA[Undergraduate students]]></value>
      </item>
      </field_audience>
  <field_media>
      </field_media>
  <field_contact>
    <item>
      <value><![CDATA[]]></value>
    </item>
  </field_contact>
  <field_location>
    <item>
      <value><![CDATA[]]></value>
    </item>
  </field_location>
  <field_sidebar>
    <item>
      <value><![CDATA[]]></value>
    </item>
  </field_sidebar>
  <field_phone>
    <item>
      <value><![CDATA[]]></value>
    </item>
  </field_phone>
  <field_url>
    <item>
      <url><![CDATA[]]></url>
      <title><![CDATA[]]></title>
            <attributes><![CDATA[]]></attributes>
    </item>
  </field_url>
  <field_email>
    <item>
      <email><![CDATA[]]></email>
    </item>
  </field_email>
  <field_boilerplate>
    <item>
      <nid><![CDATA[]]></nid>
    </item>
  </field_boilerplate>
  <links_related>
      </links_related>
  <files>
      </files>
  <og_groups>
          <item>434381</item>
      </og_groups>
  <og_groups_both>
          <item><![CDATA[ECE Ph.D. Dissertation Defenses]]></item>
      </og_groups_both>
  <field_categories>
      </field_categories>
  <field_keywords>
          <item>
        <tid>100811</tid>
        <value><![CDATA[Phd Defense]]></value>
      </item>
          <item>
        <tid>1808</tid>
        <value><![CDATA[graduate students]]></value>
      </item>
      </field_keywords>
  <field_userdata><![CDATA[]]></field_userdata>
</node>
