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Effective End-to-End Vision Language Pretraining With Semantic Visual Loss

Xiaofeng Yang, Fayao Liu, Guosheng Lin

2023IEEE Transactions on Multimedia11 citationsDOIOpen Access PDF

Abstract

Current vision language pretraining models are dominated by methods using region visual features extracted from object detectors. Given their good performance, the extract-then-process pipeline significantly restricts the inference speed and therefore limits their real-world use cases. However, training vision language models from raw image pixels is difficult, as the raw image pixels give much less prior knowledge than region features. In this paper, we systematically study how to leverage auxiliary visual pretraining tasks to help training end-to-end vision language models. We introduce three types of visual losses that enable much faster convergence and better finetuning accuracy. Compared with region feature models, our end-to-end models could achieve similar or better performance on down-stream tasks and run more than 10 times faster during inference. Compared with other end-to-end models, our proposed method could achieve similar or better performance when pretrained for only 10% of the pretraining GPU hours.

Topics & Concepts

Computer scienceLeverage (statistics)End-to-end principleArtificial intelligenceInferencePixelPipeline (software)Computer visionFeature (linguistics)Process (computing)Object detectionMachine learningPattern recognition (psychology)Natural language processingPhilosophyProgramming languageOperating systemLinguisticsMultimodal Machine Learning ApplicationsDomain Adaptation and Few-Shot LearningAdvanced Image and Video Retrieval Techniques