T$^3$Bench: Benchmarking Current Progress in Text-to-3D Generation
Recent methods in text-to-3D leverage powerful pretrained diffusion models to optimize NeRF. Notably, these methods are able to produce high-quality 3D scenes without training on 3D data. Due to the open-ended nature of the task, most studies evaluate their results with subjective case studies and u...
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Zusammenfassung: | Recent methods in text-to-3D leverage powerful pretrained diffusion models to
optimize NeRF. Notably, these methods are able to produce high-quality 3D
scenes without training on 3D data. Due to the open-ended nature of the task,
most studies evaluate their results with subjective case studies and user
experiments, thereby presenting a challenge in quantitatively addressing the
question: How has current progress in Text-to-3D gone so far? In this paper, we
introduce T$^3$Bench, the first comprehensive text-to-3D benchmark containing
diverse text prompts of three increasing complexity levels that are specially
designed for 3D generation. To assess both the subjective quality and the text
alignment, we propose two automatic metrics based on multi-view images produced
by the 3D contents. The quality metric combines multi-view text-image scores
and regional convolution to detect quality and view inconsistency. The
alignment metric uses multi-view captioning and GPT-4 evaluation to measure
text-3D consistency. Both metrics closely correlate with different dimensions
of human judgments, providing a paradigm for efficiently evaluating text-to-3D
models. The benchmarking results, shown in Fig. 1, reveal performance
differences among an extensive 10 prevalent text-to-3D methods. Our analysis
further highlights the common struggles for current methods on generating
surroundings and multi-object scenes, as well as the bottleneck of leveraging
2D guidance for 3D generation. Our project page is available at:
https://t3bench.com. |
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DOI: | 10.48550/arxiv.2310.02977 |