Bootstrap Perception Under Hardware Depth Failure for Indoor Robot Navigation
arXiv:2603.28890v1 Announce Type: new Abstract: We present a bootstrap perception system for indoor robot navigation under hardware depth failure. In our corridor data, the time-of-flight camera loses up to 78% of its depth pixels on reflective surfaces, yet a 2D LiDAR alone cannot sense obstacles above its scan plane. Our system exploits a self-referential property of this failure: the sensor's surviving valid pixels calibrate learned monocular depth to metric scale, so the system fills its own gaps without external data. The architecture forms a failure-aware sensing hierarchy, conservative when sensors work and filling in when they fail: LiDAR remains the geometric anchor, hardware depth is kept where valid, and learned depth enters only where needed. In corridor and dynamic pedestrian
View PDF HTML (experimental)
Abstract:We present a bootstrap perception system for indoor robot navigation under hardware depth failure. In our corridor data, the time-of-flight camera loses up to 78% of its depth pixels on reflective surfaces, yet a 2D LiDAR alone cannot sense obstacles above its scan plane. Our system exploits a self-referential property of this failure: the sensor's surviving valid pixels calibrate learned monocular depth to metric scale, so the system fills its own gaps without external data. The architecture forms a failure-aware sensing hierarchy, conservative when sensors work and filling in when they fail: LiDAR remains the geometric anchor, hardware depth is kept where valid, and learned depth enters only where needed. In corridor and dynamic pedestrian evaluations, selective fusion increases costmap obstacle coverage by 55-110% over LiDAR alone. A compact distilled student runs at 218,FPS on a Jetson Orin Nano and achieves 9/10 navigation success with zero collisions in closed-loop simulation, matching the ground-truth depth baseline at a fraction of the foundation model's cost.
Subjects:
Robotics (cs.RO)
Cite as: arXiv:2603.28890 [cs.RO]
(or arXiv:2603.28890v1 [cs.RO] for this version)
https://doi.org/10.48550/arXiv.2603.28890
arXiv-issued DOI via DataCite (pending registration)
Submission history
From: Aliasghar Arab [view email] [v1] Mon, 30 Mar 2026 18:14:40 UTC (2,890 KB)
Sign in to highlight and annotate this article

Conversation starters
Daily AI Digest
Get the top 5 AI stories delivered to your inbox every morning.
More about
modelfoundation modelannounceExclusive | Caltech Researchers Claim Radical Compression of High-Fidelity AI Models - WSJ
<a href="https://news.google.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?oc=5" target="_blank">Exclusive | Caltech Researchers Claim Radical Compression of High-Fidelity AI Models</a> <font color="#6f6f6f">WSJ</font>

Unlocking the Future: Sourcing Essential Components like the LM317 & ATtiny85 Online for Your Projects
<h1> Unlocking the Future: Sourcing Essential Components like the LM317 & ATtiny85 Online for Your Projects </h1> <p><em>Supply chain strategy from electronics production engineering, 500–50k units/year</em></p> <h2> Introduction </h2> <p>"Order from Digi-Key" is a prototyping strategy, not a production strategy. The 2020–2023 IC shortage demonstrated that supply chain resilience must be designed in — not improvised when lead times hit 52 weeks.</p> <h2> The Sourcing Tier Structure </h2> <div class="table-wrapper-paragraph"><table> <thead> <tr> <th>Tier</th> <th>Examples</th> <th>MOQ</th> <th>Price Premium</th> <th>Lead Time</th> <th>Risk</th> </tr> </thead> <tbody> <tr> <td>Authorized dist.</td> <td>Digi-Key, Mouser, Newark</td> <td>1 pc</td> <td>+25–40%</td> <td>1–3 days (stock)</td>

Why SOC analysts get inconsistent results from ChatGPT (and how structured workflows fix it)
<p>If you've ever handed a security alert to ChatGPT and gotten a different answer each time — you've hit the real problem.</p> <p>It's not the model. It's the prompt.</p> <p>Most analysts paste an alert and ask "what do you think?" That's like asking a junior analyst to investigate without a runbook. You'll get something back, but the quality depends entirely on how the question was framed.</p> <h2> The real problem: no structure </h2> <p>Experienced SOC analysts don't wing investigations. They follow a process:</p> <ul> <li>Triage the alert</li> <li>Map to MITRE ATT&CK</li> <li>Check for lateral movement</li> <li>Build a containment recommendation</li> <li>Write a ticket summary</li> </ul> <p>The issue is that most AI-assisted workflows skip steps 2–5 and jump straight to "is this ba
Knowledge Map
Connected Articles — Knowledge Graph
This article is connected to other articles through shared AI topics and tags.
More in Models
ChatGPT Maker OpenAI Valued at $852B After Record $122B Funding Round - Bitcoin.com News
<a href="https://news.google.com/rss/articles/CBMimAFBVV95cUxNYl9RSVpUWDFpREp2N2JJbHVvWGVhaFRlRzBOcHl1RGxoYlpWVnZWSWlUWUo1NUNNUDZEbGR1RGl6VGZQa0hWdGlVbTlYYm9UM0U3ajc1UHREcmR0WjJIbXRBdHZjblVjREdTMXJZZ1ZVeGFVNHJ6T3A3b2JSN2pLbGlNaENEeXVkNXhjRmNPSTFQeWxKaG1rNA?oc=5" target="_blank">ChatGPT Maker OpenAI Valued at $852B After Record $122B Funding Round</a> <font color="#6f6f6f">Bitcoin.com News</font>
Exclusive | The Sudden Fall of OpenAI’s Most Hyped Product Since ChatGPT - WSJ
<a href="https://news.google.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?oc=5" target="_blank">Exclusive | The Sudden Fall of OpenAI’s Most Hyped Product Since ChatGPT</a> <font color="#6f6f6f">WSJ</font>
Exclusive | The Sudden Fall of OpenAI’s Most Hyped Product Since ChatGPT - WSJ
<a href="https://news.google.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?oc=5" target="_blank">Exclusive | The Sudden Fall of OpenAI’s Most Hyped Product Since ChatGPT</a> <font color="#6f6f6f">WSJ</font>
Exclusive | Caltech Researchers Claim Radical Compression of High-Fidelity AI Models - WSJ
<a href="https://news.google.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?oc=5" target="_blank">Exclusive | Caltech Researchers Claim Radical Compression of High-Fidelity AI Models</a> <font color="#6f6f6f">WSJ</font>
Discussion
Sign in to join the discussion
No comments yet — be the first to share your thoughts!