Perceptual Quality Assessment for Embodied AI
By: Chunyi Li , Jiaohao Xiao , Jianbo Zhang and more
Potential Business Impact:
Helps robots understand messy real-world pictures.
Embodied AI has developed rapidly in recent years, but it is still mainly deployed in laboratories, with various distortions in the Real-world limiting its application. Traditionally, Image Quality Assessment (IQA) methods are applied to predict human preferences for distorted images; however, there is no IQA method to assess the usability of an image in embodied tasks, namely, the perceptual quality for robots. To provide accurate and reliable quality indicators for future embodied scenarios, we first propose the topic: IQA for Embodied AI. Specifically, we (1) based on the Mertonian system and meta-cognitive theory, constructed a perception-cognition-decision-execution pipeline and defined a comprehensive subjective score collection process; (2) established the Embodied-IQA database, containing over 36k reference/distorted image pairs, with more than 5m fine-grained annotations provided by Vision Language Models/Vision Language Action-models/Real-world robots; (3) trained and validated the performance of mainstream IQA methods on Embodied-IQA, demonstrating the need to develop more accurate quality indicators for Embodied AI. We sincerely hope that through evaluation, we can promote the application of Embodied AI under complex distortions in the Real-world. Project page: https://github.com/lcysyzxdxc/EmbodiedIQA
Similar Papers
Image Quality Assessment: From Human to Machine Preference
CV and Pattern Recognition
Helps computers judge picture quality for tasks.
A Survey on Image Quality Assessment: Insights, Analysis, and Future Outlook
CV and Pattern Recognition
Makes pictures look better by checking them.
Perceptual Classifiers: Detecting Generative Images using Perceptual Features
CV and Pattern Recognition
Finds fake pictures made by AI.