mbzuai-oryx / groundingLMM

[CVPR 2024 πŸ”₯] Grounding Large Multimodal Model (GLaMM), the first-of-its-kind model capable of generating natural language responses that are seamlessly integrated with object segmentation masks.
https://grounding-anything.com
700 stars 35 forks source link
foundation-models llm-agent lmm vision-and-language vision-language-model

GLaMM : Pixel Grounding Large Multimodal Model [CVPR 2024]

Oryx Video-ChatGPT

Hanoona Rasheed*, Muhammad Maaz*, Sahal Shaji, Abdelrahman Shaker, Salman Khan, Hisham Cholakkal, Rao M. Anwer, Eric Xing, Ming-Hsuan Yang and Fahad Khan

Mohamed bin Zayed University of AI, Australian National University, Aalto University, Carnegie Mellon University, University of California - Merced, LinkΓΆping University, Google Research

paper Dataset Demo Website video


πŸ“’ Latest Updates


GLaMM Overview

Grounding Large Multimodal Model (GLaMM) is an end-to-end trained LMM which provides visual grounding capabilities with the flexibility to process both image and region inputs. This enables the new unified task of Grounded Conversation Generation that combines phrase grounding, referring expression segmentation, and vision-language conversations. Equipped with the capability for detailed region understanding, pixel-level groundings, and conversational abilities, GLaMM offers a versatile capability to interact with visual inputs provided by the user at multiple granularity levels.


πŸ† Contributions


πŸš€ Dive Deeper: Inside GLaMM's Training and Evaluation

Delve into the core of GLaMM with our detailed guides on the model's Training and Evaluation methodologies.

πŸ‘οΈπŸ’¬ GLaMM: Grounding Large Multimodal Model

The components of GLaMM are cohesively designed to handle both textual and optional visual prompts (image level and region of interest), allowing for interaction at multiple levels of granularity, and generating grounded text responses.

GLaMM Architectural Overview


πŸ” Grounding-anything Dataset (GranD)

The Grounding-anything GranD dataset, a large-scale dataset with automated annotation pipeline for detailed region-level understanding and segmentation masks. GranD comprises 7.5M unique concepts anchored in a total of 810M regions, each with a segmentation mask.

Dataset Annotation Pipeline


Below we present some examples of the GranD dataset.

GranD Dataset Sample

GranD Dataset Sample


πŸ“š Building GranD-f for Grounded Conversation Generation

The GranD-f dataset is designed for the GCG task, with about 214K image-grounded text pairs for higher-quality data in fine-tuning stage.

GranD-f Dataset Sample


πŸ€– Grounded Conversation Generation (GCG)

Introducing GCG, a task to create image-level captions tied to segmentation masks, enhancing the model’s visual grounding in natural language captioning.

Results_GCG

GCG_Table


πŸš€ Downstream Applications

🎯 Referring Expression Segmentation

Our model excels in creating segmentation masks from text-based referring expressions.

Results_RefSeg

Table_RefSeg


πŸ–ΌοΈ Region-Level Captioning

GLaMM generates detailed region-specific captions and answers reasoning-based visual questions.

Results_RegionCap

Table_RegionCap


πŸ“· Image Captioning

Comparing favorably to specialized models, GLaMM provides high-quality image captioning.

Results_Cap


πŸ’¬ Conversational Style Question Answering

GLaMM demonstrates its prowess in engaging in detailed, region-specific, and grounded conversations. This effectively highlights its adaptability in intricate visual-language interactions and robustly retaining reasoning capabilities inherent to LLMs.

Results_Conv


Results_Conv


πŸ“œ Citation

  @article{hanoona2023GLaMM,
          title={GLaMM: Pixel Grounding Large Multimodal Model},
          author={Rasheed, Hanoona and Maaz, Muhammad and Shaji, Sahal and Shaker, Abdelrahman and Khan, Salman and Cholakkal, Hisham and Anwer, Rao M. and Xing, Eric and Yang, Ming-Hsuan and Khan, Fahad S.},
          journal={The IEEE/CVF Conference on Computer Vision and Pattern Recognition},
          year={2024}
  }

πŸ™ Acknowledgement

We are thankful to LLaVA, GPT4ROI, and LISA for releasing their models and code as open-source contributions.