AI RESEARCH
Understanding Task Transfer in Vision-Language Models
arXiv CS.CV
•
ArXi:2511.18787v2 Announce Type: replace Vision-Language Models (VLMs) perform well on multimodal benchmarks but lag behind humans and specialized models on visual perception tasks like depth estimation or object counting. Finetuning on one task can unpredictably affect performance on others, making task-specific finetuning challenging. In this paper, we address this challenge through a systematic study of task transferability. We examine how finetuning a VLM on one perception task affects its zero-shot performance on others. We.