LGAICLCVROJun 26, 2021

Core Challenges in Embodied Vision-Language Planning

arXiv:2106.13948v463 citations
Originality Synthesis-oriented
AI Analysis

It identifies core challenges for researchers in embodied AI to improve model generalizability and real-world deployment, but it is incremental as a survey.

This survey paper tackles the lack of holistic analysis in Embodied Vision-Language Planning (EVLP) by proposing a taxonomy to unify tasks and providing an in-depth comparison of approaches, metrics, environments, and datasets.

Recent advances in the areas of multimodal machine learning and artificial intelligence (AI) have led to the development of challenging tasks at the intersection of Computer Vision, Natural Language Processing, and Embodied AI. Whereas many approaches and previous survey pursuits have characterised one or two of these dimensions, there has not been a holistic analysis at the center of all three. Moreover, even when combinations of these topics are considered, more focus is placed on describing, e.g., current architectural methods, as opposed to also illustrating high-level challenges and opportunities for the field. In this survey paper, we discuss Embodied Vision-Language Planning (EVLP) tasks, a family of prominent embodied navigation and manipulation problems that jointly use computer vision and natural language. We propose a taxonomy to unify these tasks and provide an in-depth analysis and comparison of the new and current algorithmic approaches, metrics, simulated environments, as well as the datasets used for EVLP tasks. Finally, we present the core challenges that we believe new EVLP works should seek to address, and we advocate for task construction that enables model generalizability and furthers real-world deployment.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes