CVAILGAug 9, 2024

UniBench: Visual Reasoning Requires Rethinking Vision-Language Beyond Scaling

arXiv:2408.04810v129 citationsh-index: 20
Originality Synthesis-oriented
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This work addresses the problem of fragmented and costly evaluation for vision-language models, providing a systematic tool for researchers and practitioners, though it is incremental in benchmarking methodology.

The authors introduced UniBench, a unified implementation of over 50 vision-language benchmarks, and evaluated nearly 60 models to find that scaling data or model size improves many capabilities but offers little benefit for reasoning tasks, with top models struggling on simple tasks like MNIST digit recognition.

Significant research efforts have been made to scale and improve vision-language model (VLM) training approaches. Yet, with an ever-growing number of benchmarks, researchers are tasked with the heavy burden of implementing each protocol, bearing a non-trivial computational cost, and making sense of how all these benchmarks translate into meaningful axes of progress. To facilitate a systematic evaluation of VLM progress, we introduce UniBench: a unified implementation of 50+ VLM benchmarks spanning a comprehensive range of carefully categorized capabilities from object recognition to spatial awareness, counting, and much more. We showcase the utility of UniBench for measuring progress by evaluating nearly 60 publicly available vision-language models, trained on scales of up to 12.8B samples. We find that while scaling training data or model size can boost many vision-language model capabilities, scaling offers little benefit for reasoning or relations. Surprisingly, we also discover today's best VLMs struggle on simple digit recognition and counting tasks, e.g. MNIST, which much simpler networks can solve. Where scale falls short, we find that more precise interventions, such as data quality or tailored-learning objectives offer more promise. For practitioners, we also offer guidance on selecting a suitable VLM for a given application. Finally, we release an easy-to-run UniBench code-base with the full set of 50+ benchmarks and comparisons across 59 models as well as a distilled, representative set of benchmarks that runs in 5 minutes on a single GPU.

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