ROCVAug 7, 2024

Using a Distance Sensor to Detect Deviations in a Planar Surface

arXiv:2408.03838v17 citationsh-index: 5
Originality Incremental advance
AI Analysis

This work addresses obstacle and cliff detection for mobile robots, but appears incremental as it builds on existing sensor data analysis.

The paper tackled the problem of detecting geometric deviations on planar surfaces using raw time-of-flight sensor data, and found that their method outperformed baselines using only derived distance estimates.

We investigate methods for determining if a planar surface contains geometric deviations (e.g., protrusions, objects, divots, or cliffs) using only an instantaneous measurement from a miniature optical time-of-flight sensor. The key to our method is to utilize the entirety of information encoded in raw time-of-flight data captured by off-the-shelf distance sensors. We provide an analysis of the problem in which we identify the key ambiguity between geometry and surface photometrics. To overcome this challenging ambiguity, we fit a Gaussian mixture model to a small dataset of planar surface measurements. This model implicitly captures the expected geometry and distribution of photometrics of the planar surface and is used to identify measurements that are likely to contain deviations. We characterize our method on a variety of surfaces and planar deviations across a range of scenarios. We find that our method utilizing raw time-of-flight data outperforms baselines which use only derived distance estimates. We build an example application in which our method enables mobile robot obstacle and cliff avoidance over a wide field-of-view.

Foundations

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