Scensory: Real-Time Robotic Olfactory Perception for Joint Identification and Source Localization

arXiv cs.RO / 4/24/2026

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Key Points

  • The paper introduces Scensory, a learning-based robotic olfaction framework designed to identify fungal species and localize their sources using short time series from low-cost cross-sensitive VOC sensor arrays.
  • It leverages temporal VOC dynamics to capture both chemical (what it is) and spatial (where it is) signatures, decoding them with neural networks trained on robot-automated data collection with spatial supervision.
  • Experiments across five fungal species show strong performance under ambient conditions, reaching up to 89.85% species identification accuracy and 87.31% source localization accuracy with 3–7 seconds of sensor input.
  • The authors argue the approach enables real-time, spatially grounded perception from diffusion-dominated chemical signals, supporting scalable robotic indoor environmental monitoring.

Abstract

While robotic perception has advanced rapidly in vision and touch, enabling robots to reason about indoor fungal contamination from weak, diffusion-dominated chemical signals remains an open challenge. We introduce Scensory, a learning-based robotic olfaction framework that simultaneously identifies fungal species and localizes their source from short time series measured by affordable, cross-sensitive VOC sensor arrays. Temporal VOC dynamics encode both chemical and spatial signatures, which we decode through neural networks trained on robot-automated data collection with spatial supervision. Across five fungal species, Scensory achieves up to 89.85% species accuracy and 87.31% source localization accuracy under ambient conditions with 3-7s sensor inputs. These results demonstrate real-time, spatially grounded perception from diffusion-dominated chemical signals, enabling scalable and low-cost source localization for robotic indoor environmental monitoring.