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公开(公告)号:US11927963B2
公开(公告)日:2024-03-12
申请号:US17207039
申请日:2021-03-19
Applicant: AMAZON TECHNOLOGIES, INC.
Inventor: Shreekant Gayaka , Boshen Niu , Simon Edwards-Parton
IPC: G06F17/10 , G01C21/20 , G05D1/00 , G06T7/246 , G06T7/60 , G06T7/73 , G06V20/56 , G10L15/08 , G10L15/22 , H04R1/32 , H04R3/00
CPC classification number: G05D1/0214 , G01C21/206 , G05D1/0088 , G05D1/0238 , G06T7/248 , G06T7/60 , G06T7/74 , G06V20/56 , G10L15/08 , G10L15/22 , H04R1/326 , H04R3/005 , G06T2207/10028 , G06T2207/30241 , G06T2207/30252 , G10L2015/088
Abstract: A physical space contains stationary objects that do not move over time (e.g., a couch) and may have non-stationary objects that do move over time (e.g., people and pets). An autonomous mobile device (AMD) determines and uses an occupancy map of stationary objects to find a route from one point to another in a physical space. Non-stationary objects are detected and prevented from being incorrectly added to the occupancy map. Point cloud data is processed to determine first candidate objects. Image data is processed to determine second candidate objects. These candidate objects are associated with each other and their characteristics assessed to determine if the candidate objects are stationary or non-stationary. The occupancy map is updated with stationary obstacles. During navigation, the occupancy map may be used for route planning while the non-stationary objects are used for local avoidance.
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公开(公告)号:US11797022B1
公开(公告)日:2023-10-24
申请号:US17305013
申请日:2021-06-29
Applicant: AMAZON TECHNOLOGIES, INC.
Inventor: James Ballantyne , Eric Foxlin , Lu Xia , Simon Edwards-Parton , Boshen Niu , Harish Annavajjala
CPC classification number: G05D1/0251 , G05D1/0088 , G05D1/0214 , G06T7/12 , G06T7/13 , G06T7/521 , G06T7/593 , G06T2207/10012 , G06T2207/10028 , G06T2207/30261
Abstract: An autonomous mobile device (AMD) may move around a physical space while performing tasks. Sensor data is used to determine an occupancy map of the physical space. Some objects within the physical space may be difficult to detect because of characteristics that result in lower confidence in sensor data, such as transparent or reflective objects. To include difficult-to-detect objects in the occupancy map, image data is processed to identify portions of the image that includes features associated with difficult-to-detect objects. Given the portion that possibly includes difficult-to-detect objects, the AMD attempts to determine where in the physical space that portion corresponds to. For example, the AMD may use stereovision to determine the physical area associated with the features depicted in the portion. Objects in that area are included in an occupancy map annotated as objects that should persist unless confirmed to not be within the physical space.
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