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Paper

ApolloCar3D: A Large 3D Car Instance Understanding Benchmark for Autonomous Driving

by Independent / Community 00cf743a6944758a19d703e63e3197d0b13cd34b
Free2AITools Nexus Index
70.9
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A: Authority 88
P: Popularity 66
R: Recency 100
Q: Quality 65
Tech Context
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Autonomous driving has attracted remarkable attention from both industry and academia. An important task is to estimate 3D properties (e.g. translation, rotation and shape) of a moving or parked vehicle on the road. This task, while critical, is still under-researched in the computer vision community – partially owing to the lack of large scale and fully-annotated 3D car database suitable for autonomous driving research. In this paper, we contribute the first large scale database suitable for...

High Impact 179 Citations
Paper Information Summary
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Registry ID 00cf743a6944758a19d703e63e3197d0b13cd34b
License ArXiv
Provider semantic_scholar
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Cite this paper

Academic & Research Attribution

BibTeX
@misc{00cf743a6944758a19d703e63e3197d0b13cd34b,
  author = {Unknown},
  title = {ApolloCar3D: A Large 3D Car Instance Understanding Benchmark for Autonomous Driving Paper},
  year = {2026},
  howpublished = {\url{https://api.semanticscholar.org/00cf743a6944758a19d703e63e3197d0b13cd34b}},
  note = {Accessed via Free2AITools Knowledge Fortress}
}
APA Style
Unknown. (2026). ApolloCar3D: A Large 3D Car Instance Understanding Benchmark for Autonomous Driving [Paper]. Free2AITools. https://api.semanticscholar.org/00cf743a6944758a19d703e63e3197d0b13cd34b

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âš–ī¸ Free2AITools Nexus Index V2.0

Semantic (S) 50

Query-time baseline · scored live at search

Authority (A) 88
Popularity (P) 66
Recency (R) 100
Quality (Q) 65

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FNI V2.0 for ApolloCar3D: A Large 3D Car Instance Understanding Benchmark for Autonomous Driving: Authority (A:88), Popularity (P:66), Recency (R:100), Quality (Q:65). Semantic (S) is a query-time baseline scored live at search.

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📝 Executive Summary

"Autonomous driving has attracted remarkable attention from both industry and academia. An important task is to estimate 3D properties (e.g. translation, rotation and shape) of a moving or parked vehicle on the road. This task, while critical, is still under-researched in the computer vision community – partially owing to the lack of large scale and fully-annotated 3D car database suitable for autonomous driving research. In this paper, we contribute the first large scale database suitable for..."

❝ Cite Node

@article{Unknown2026ApolloCar3D:,
  title={ApolloCar3D: A Large 3D Car Instance Understanding Benchmark for Autonomous Driving},
  author={},
  note={Indexed by Free2AITools},
  year={2026}
}

Abstract & Analysis

Autonomous driving has attracted remarkable attention from both industry and academia. An important task is to estimate 3D properties (e.g. translation, rotation and shape) of a moving or parked vehicle on the road. This task, while critical, is still under-researched in the computer vision community – partially owing to the lack of large scale and fully-annotated 3D car database suitable for autonomous driving research. In this paper, we contribute the first large scale database suitable for 3D car instance understanding – ApolloCar3D. The dataset contains 5,277 driving images and over 60K car instances, where each car is fitted with an industry-grade 3D CAD model with absolute model size and semantically labelled keypoints. This dataset is above 20× larger than PASCAL3D+ and KITTI, the current state-of-the-art. To enable efficient labelling in 3D, we build a pipeline by considering 2D-3D keypoint correspondences for a single instance and 3D relationship among multiple instances. Equipped with such dataset, we build various baseline algorithms with the state-of-the-art deep convolutional neural networks. Specifically, we first segment each car with a pre-trained Mask R-CNN, and then regress towards its 3D pose and shape based on a deformable 3D car model with or without using semantic keypoints. We show that using keypoints significantly improves fitting performance. Finally, we develop a new 3D metric jointly considering 3D pose and 3D shape, allowing for comprehensive evaluation and ablation study.

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source
semantic_scholar
author
Unknown
license
ArXiv
tags
paper, research, academic

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