CLIPGraphs: Multimodal Graph Networks to Infer Object-Room Affinities (2306.01540v1)
Abstract: This paper introduces a novel method for determining the best room to place an object in, for embodied scene rearrangement. While state-of-the-art approaches rely on LLMs or reinforcement learned (RL) policies for this task, our approach, CLIPGraphs, efficiently combines commonsense domain knowledge, data-driven methods, and recent advances in multimodal learning. Specifically, it (a)encodes a knowledge graph of prior human preferences about the room location of different objects in home environments, (b) incorporates vision-language features to support multimodal queries based on images or text, and (c) uses a graph network to learn object-room affinities based on embeddings of the prior knowledge and the vision-language features. We demonstrate that our approach provides better estimates of the most appropriate location of objects from a benchmark set of object categories in comparison with state-of-the-art baselines
- Ayush Agrawal (17 papers)
- Raghav Arora (6 papers)
- Ahana Datta (4 papers)
- Snehasis Banerjee (14 papers)
- Brojeshwar Bhowmick (37 papers)
- Krishna Murthy Jatavallabhula (30 papers)
- Mohan Sridharan (30 papers)
- Madhava Krishna (24 papers)