An Attentional Recurrent Neural Network for Occlusion-Aware Proactive Anomaly Detection in Field Robot Navigation
The use of mobile robots in unstructured environments like the agricultural field is becoming increasingly common. The ability for such field robots to proactively identify and avoid failures is thus crucial for ensuring efficiency and avoiding damage. However, the cluttered field environment introd...
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Zusammenfassung: | The use of mobile robots in unstructured environments like the agricultural
field is becoming increasingly common. The ability for such field robots to
proactively identify and avoid failures is thus crucial for ensuring efficiency
and avoiding damage. However, the cluttered field environment introduces
various sources of noise (such as sensor occlusions) that make proactive
anomaly detection difficult. Existing approaches can show poor performance in
sensor occlusion scenarios as they typically do not explicitly model occlusions
and only leverage current sensory inputs. In this work, we present an
attention-based recurrent neural network architecture for proactive anomaly
detection that fuses current sensory inputs and planned control actions with a
latent representation of prior robot state. We enhance our model with an
explicitly-learned model of sensor occlusion that is used to modulate the use
of our latent representation of prior robot state. Our method shows improved
anomaly detection performance and enables mobile field robots to display
increased resilience to predicting false positives regarding navigation failure
during periods of sensor occlusion, particularly in cases where all sensors are
briefly occluded. Our code is available at:
https://github.com/andreschreiber/roar |
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DOI: | 10.48550/arxiv.2309.16826 |