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5 months ago

ShapeLLM: Universal 3D Object Understanding for Embodied Interaction

Qi Zekun ; Dong Runpei ; Zhang Shaochen ; Geng Haoran ; Han Chunrui ; Ge Zheng ; Yi Li ; Ma Kaisheng

ShapeLLM: Universal 3D Object Understanding for Embodied Interaction

Abstract

This paper presents ShapeLLM, the first 3D Multimodal Large Language Model(LLM) designed for embodied interaction, exploring a universal 3D objectunderstanding with 3D point clouds and languages. ShapeLLM is built upon animproved 3D encoder by extending ReCon to ReCon++ that benefits from multi-viewimage distillation for enhanced geometry understanding. By utilizing ReCon++ asthe 3D point cloud input encoder for LLMs, ShapeLLM is trained on constructedinstruction-following data and tested on our newly human-curated benchmark, 3DMM-Vet. ReCon++ and ShapeLLM achieve state-of-the-art performance in 3Dgeometry understanding and language-unified 3D interaction tasks, such asembodied visual grounding. Project page: https://qizekun.github.io/shapellm/

Code Repositories

qizekun/ShapeLLM
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
3d-object-captioning-on-objaverse-1ShapeLLM-13B
Sentence-BERT: 48.52
GPT-4: 48.94
SimCSE: 49.98
3d-object-captioning-on-objaverse-1ShapeLLM-7B
Sentence-BERT: 48.20
GPT-4: 46.92
SimCSE: 49.23
3d-point-cloud-classification-on-modelnet40ReCon++
Overall Accuracy: 95.0
3d-point-cloud-classification-on-scanobjectnnReCon++
OBJ-BG (OA): 98.80
OBJ-ONLY (OA): 97.59
Overall Accuracy: 95.25
3d-point-cloud-linear-classification-onReCon++
Overall Accuracy: 93.6
3d-question-answering-3d-qa-on-3d-mm-vetShapeLLM-13B
Overall Accuracy: 53.1
3d-question-answering-3d-qa-on-3d-mm-vetShapeLLM-7B
Overall Accuracy: 47.4
few-shot-3d-point-cloud-classification-on-1ReCon++
Overall Accuracy: 98.0
Standard Deviation: 2.3
few-shot-3d-point-cloud-classification-on-2ReCon++
Overall Accuracy: 99.5
Standard Deviation: 0.8
few-shot-3d-point-cloud-classification-on-3ReCon++
Overall Accuracy: 94.5
Standard Deviation: 4.1
few-shot-3d-point-cloud-classification-on-4ReCon++
Overall Accuracy: 96.5
Standard Deviation: 3.0
generative-3d-object-classification-on-1ShapeLLM-13B
Objaverse (Average): 54.00
generative-3d-object-classification-on-1ShapeLLM-7B
Objaverse (Average): 54.50
generative-3d-object-classification-on-2ShapeLLM-13B
ModelNet40 (Average): 52.96
generative-3d-object-classification-on-2ShapeLLM-7B
ModelNet40 (Average): 53.08
zero-shot-transfer-3d-point-cloudReCon++
Accuracy (%): 87.3
zero-shot-transfer-3d-point-cloud-2ReCon++
OBJ_ONLY Accuracy(%): 65.4

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