NVIDIA Corporation
OBJECT BEHAVIOR ANOMALY DETECTION USING NEURAL NETWORKS
Last updated:
Abstract:
In various examples, a set of object trajectories may be determined based at least in part on sensor data representative of a field of view of a sensor. The set of object trajectories may be applied to a long short-term memory (LSTM) network to train the LSTM network. An expected object trajectory for an object in the field of view of the sensor may be computed by the LSTM network based at least in part an observed object trajectory. By comparing the observed object trajectory to the expected object trajectory, a determination may be made that the observed object trajectory is indicative of an anomaly.
Status:
Application
Type:
Utility
Filling date:
25 Mar 2019
Issue date:
26 Sep 2019