Author:
Wang Hua,Wang Wenshuai,Li Wenhao,Liu Hong
Abstract
The field of human-computer interaction is expanding, especially within the domain of intelligent technologies. Scene understanding, which entails the generation of advanced semantic descriptions from scene content, is crucial for effective interaction. Despite its importance, it remains a significant challenge. This study introduces RGBD2Cap, an innovative method that uses RGBD images for scene semantic description. We utilize a multimodal fusion module to integrate RGB and Depth information for extracting multi-level features. And the method also incorporates target detection and region proposal network and a top-down attention LSTM network to generate semantic descriptions. The experimental data are derived from the ScanRefer indoor scene dataset, with RGB and depth images rendered from ScanNet's 3D scene serving as the model's input. The method outperforms the DenseCap network in several metrics, including BLEU, CIDEr, and METEOR. Ablation studies have confirmed the essential role of the RGBD fusion module in the method's success. Furthermore, the practical applicability of our method was verified within the AI2-THOR embodied intelligence experimental environment, showcasing its reliability.
Funder
National Key Research and Development Program of China
Science and Technology Planning Project of Shenzhen Municipality
Shenzhen Fundamental Research Program
Subject
Artificial Intelligence,Biomedical Engineering
Reference34 articles.
1. “Bottom-up and top-down attention for image captioning and visual question answering,”;Anderson,2018
2. “METEOR: an automatic metric for MT evaluation with improved correlation with human judgments,”;Banerjee,2005
3. “3DJCG: a unified framework for joint dense captioning and visual grounding on 3D point clouds,”;Cai,2022
4. “ScanRefer: 3D object localization in RGB-D scans using natural language,”;Chen,2020
5. Unit3D: a unified transformer for 3d dense captioning and visual grounding;Chen;arXiv preprint arXiv:2212.00836,2022