Study of Dropout in PointPillars with 3D Object Detection
- URL: http://arxiv.org/abs/2409.00673v1
- Date: Sun, 1 Sep 2024 09:30:54 GMT
- Title: Study of Dropout in PointPillars with 3D Object Detection
- Authors: Xiaoxiang Sun, Geoffrey Fox,
- Abstract summary: 3D object detection is critical for autonomous driving, leveraging deep learning techniques to interpret LiDAR data.
This study provides an analysis of enhancing the performance of PointPillars model under various dropout rates.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 3D object detection is critical for autonomous driving, leveraging deep learning techniques to interpret LiDAR data. The PointPillars architecture is a prominent model in this field, distinguished by its efficient use of LiDAR data. This study provides an analysis of enhancing the performance of PointPillars model under various dropout rates to address overfitting and improve model generalization. Dropout, a regularization technique, involves randomly omitting neurons during training, compelling the network to learn robust and diverse features. We systematically compare the effects of different enhancement techniques on the model's regression performance during training and its accuracy, measured by Average Precision (AP) and Average Orientation Similarity (AOS). Our findings offer insights into the optimal enhancements, contributing to improved 3D object detection in autonomous driving applications.
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