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首页|I2MVFormer: Large Language Model Generated Multi-View Document Supervision for Zero-Shot Image Classification

I2MVFormer: Large Language Model Generated Multi-View Document Supervision for Zero-Shot Image Classification

I2MVFormer: Large Language Model Generated Multi-View Document Supervision for Zero-Shot Image Classification

来源:Arxiv_logoArxiv
英文摘要

Recent works have shown that unstructured text (documents) from online sources can serve as useful auxiliary information for zero-shot image classification. However, these methods require access to a high-quality source like Wikipedia and are limited to a single source of information. Large Language Models (LLM) trained on web-scale text show impressive abilities to repurpose their learned knowledge for a multitude of tasks. In this work, we provide a novel perspective on using an LLM to provide text supervision for a zero-shot image classification model. The LLM is provided with a few text descriptions from different annotators as examples. The LLM is conditioned on these examples to generate multiple text descriptions for each class(referred to as views). Our proposed model, I2MVFormer, learns multi-view semantic embeddings for zero-shot image classification with these class views. We show that each text view of a class provides complementary information allowing a model to learn a highly discriminative class embedding. Moreover, we show that I2MVFormer is better at consuming the multi-view text supervision from LLM compared to baseline models. I2MVFormer establishes a new state-of-the-art on three public benchmark datasets for zero-shot image classification with unsupervised semantic embeddings.

Muhammad Ferjad Naeem、Federico Tombari、Yongqin Xian、Luc Van Gool、Didier Stricker、Muhammad Zeshan Afzal、Muhammad Gul Zain Ali Khan

计算技术、计算机技术

Muhammad Ferjad Naeem,Federico Tombari,Yongqin Xian,Luc Van Gool,Didier Stricker,Muhammad Zeshan Afzal,Muhammad Gul Zain Ali Khan.I2MVFormer: Large Language Model Generated Multi-View Document Supervision for Zero-Shot Image Classification[EB/OL].(2022-12-05)[2025-06-06].https://arxiv.org/abs/2212.02291.点此复制

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