AI RESEARCH
Pixelis: Reasoning in Pixels, from Seeing to Acting
arXiv CS.AI
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ArXi:2603.25091v1 Announce Type: cross Most vision-language systems are static observers: they describe pixels, do not act, and cannot safely improve under shift. This passivity limits generalizable, physically grounded visual intelligence. Learning through action, not static description, is essential beyond curated data. We present Pixelis, a pixel-space agent that operates directly on images and videos via a compact set of executable operations (zoom/crop, segment, track, OCR, temporal localization) and learns from its consequences.