AI RESEARCH

Frame Sampling Strategies Matter: A Benchmark for small vision language models

arXiv CS.CL

ArXi:2509.14769v2 Announce Type: replace-cross Comparing vision language models on videos is particularly complex, as the performances is jointly determined by the model's visual representation capacity and the frame-sampling strategy used to construct the input. Current video benchmarks are suspected to suffer from substantial frame-sampling bias, as models are evaluated with different frame selection strategies. In this work, we propose the first frame-accurate benchmark of state-of-the-art small VLMs for video question-answering, evaluated under controlled frame-sampling strategies.