cs.AI updates on arXiv.org 09月12日
OSIM:3D场景评估的新方法
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本文提出了一种名为OSIM的新评价方法,针对3D场景中的“物体”进行评估,旨在更贴近人类视觉感知。通过用户研究和模型分析,证实OSIM在3D场景评估方面具有优越性。

arXiv:2509.09143v1 Announce Type: cross Abstract: This paper presents Objectness SIMilarity (OSIM), a novel evaluation metric for 3D scenes that explicitly focuses on "objects," which are fundamental units of human visual perception. Existing metrics assess overall image quality, leading to discrepancies with human perception. Inspired by neuropsychological insights, we hypothesize that human recognition of 3D scenes fundamentally involves attention to individual objects. OSIM enables object-centric evaluations by leveraging an object detection model and its feature representations to quantify the "objectness" of each object in the scene. Our user study demonstrates that OSIM aligns more closely with human perception compared to existing metrics. We also analyze the characteristics of OSIM using various approaches. Moreover, we re-evaluate recent 3D reconstruction and generation models under a standardized experimental setup to clarify advancements in this field. The code is available at https://github.com/Objectness-Similarity/OSIM.

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3D场景 OSIM 物体检测 评估方法 人类视觉感知
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