Lightweight Language-Driven Grasp Detection Using Conditional Consistency Model
Nghia Nguyen, Minh Nhat Vu, Baoru Huang, An Dinh Vuong, Ngan Le, Thieu Vo, Anh Nguyen
Abstract
Language-driven grasp detection is a fundamental yet challenging task in robotics with various industrial applica- tions. This work presents a new approach for language-driven grasp detection that leverages lightweight diffusion models to achieve fast inference time. By integrating diffusion processes with grasping prompts in natural language, our method can effectively encode visual and textual information, enabling more accurate and versatile grasp positioning that aligns well with the text query. To overcome the long inference time problem in diffusion models, we leverage the image and text features as the condition in the consistency model to reduce the number of de- noising timesteps during inference. The intensive experimental results show that our method outperforms other recent grasp detection methods and lightweight diffusion models by a clear margin. We further validate our method in real-world robotic experiments to demonstrate its fast inference time capability.