CLLGJul 15, 2020

Multimodal Word Sense Disambiguation in Creative Practice

arXiv:2007.07758v2
AI Analysis

This provides a foundational resource for subjective image description and multimodal word disambiguation in creative domains like architecture, art, and design.

The authors tackled the problem of ambiguous language in creative practice by creating the ADARI dataset containing 240k images with 260k descriptive sentences, and demonstrated the potential of multimodal approaches for understanding ambiguity in design intentions using BERT-based analysis.

Language is ambiguous; many terms and expressions can convey the same idea. This is especially true in creative practice, where ideas and design intents are highly subjective. We present a dataset, Ambiguous Descriptions of Art Images (ADARI), of contemporary workpieces, which aims to provide a foundational resource for subjective image description and multimodal word disambiguation in the context of creative practice. The dataset contains a total of 240k images labeled with 260k descriptive sentences. It is additionally organized into sub-domains of architecture, art, design, fashion, furniture, product design and technology. In subjective image description, labels are not deterministic: for example, the ambiguous label dynamic might correspond to hundreds of different images. To understand this complexity, we analyze the ambiguity and relevance of text with respect to images using the state-of-the-art pre-trained BERT model for sentence classification. We provide a baseline for multi-label classification tasks and demonstrate the potential of multimodal approaches for understanding ambiguity in design intentions. We hope that ADARI dataset and baselines constitute a first step towards subjective label classification.

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