Fine-Grained Vehicle Perception via 3D Part-Guided Visual Data Augmentation
Feixiang Lu, Zongdai Liu, Hui Miao, Peng Wang, Liangjun Zhang, Ruigang, Yang, Dinesh Manocha, Bin Zhou

TL;DR
This paper introduces a fully automatic data augmentation method for fine-grained vehicle perception, enabling better understanding of vehicle parts and states in autonomous driving scenarios, with significant improvements over baseline models.
Contribution
It proposes a novel automatic data generation process for dynamic vehicle states, a multi-task network for detailed perception, and the first dataset for uncommon vehicle states in traffic.
Findings
Over 8% improvement in 2D detection and segmentation
Large gains in understanding uncommon vehicle states
Effective augmentation enhances deep neural network performance
Abstract
Holistically understanding an object and its 3D movable parts through visual perception models is essential for enabling an autonomous agent to interact with the world. For autonomous driving, the dynamics and states of vehicle parts such as doors, the trunk, and the bonnet can provide meaningful semantic information and interaction states, which are essential to ensuring the safety of the self-driving vehicle. Existing visual perception models mainly focus on coarse parsing such as object bounding box detection or pose estimation and rarely tackle these situations. In this paper, we address this important autonomous driving problem by solving three critical issues. First, to deal with data scarcity, we propose an effective training data generation process by fitting a 3D car model with dynamic parts to vehicles in real images before reconstructing human-vehicle interaction (VHI)…
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Taxonomy
TopicsAdvanced Neural Network Applications · Autonomous Vehicle Technology and Safety · Human Pose and Action Recognition
