Unsupervised Video Object Segmentation for Deep Reinforcement Learning
Vikash Goel, Jameson Weng, Pascal Poupart
–Neural Information Processing Systems
We present a new technique for deep reinforcement learning that automatically detects moving objects and uses the relevant information for action selection. The detection of moving objects is done in an unsupervised way by exploiting structure from motion. Instead of directly learning a policy from raw images, the agent first learns to detect and segment moving objects by exploiting flow information in video sequences. The learned representation is then used to focus the policy of the agent on the moving objects. Over time, the agent identifies which objects are critical for decision making and gradually builds a policy based on relevant moving objects.
Neural Information Processing Systems
Oct-7-2024, 20:29:18 GMT
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