Enhancing 3D Object Detection with 2D Detection-Guided Query Anchors
This work addresses a specific bottleneck in multi-camera 3D object detection for autonomous driving, offering incremental improvements by integrating 2D detection guidance.
The paper tackles the problem of improving 3D object detection by leveraging more reliable 2D detection results, particularly in faraway regions, and achieves a performance gain of up to 2.3% NDS and 2.7% mAP on the nuScenes dataset.
Multi-camera-based 3D object detection has made notable progress in the past several years. However, we observe that there are cases (e.g. faraway regions) in which popular 2D object detectors are more reliable than state-of-the-art 3D detectors. In this paper, to improve the performance of query-based 3D object detectors, we present a novel query generating approach termed QAF2D, which infers 3D query anchors from 2D detection results. A 2D bounding box of an object in an image is lifted to a set of 3D anchors by associating each sampled point within the box with depth, yaw angle, and size candidates. Then, the validity of each 3D anchor is verified by comparing its projection in the image with its corresponding 2D box, and only valid anchors are kept and used to construct queries. The class information of the 2D bounding box associated with each query is also utilized to match the predicted boxes with ground truth for the set-based loss. The image feature extraction backbone is shared between the 3D detector and 2D detector by adding a small number of prompt parameters. We integrate QAF2D into three popular query-based 3D object detectors and carry out comprehensive evaluations on the nuScenes dataset. The largest improvement that QAF2D can bring about on the nuScenes validation subset is $2.3\%$ NDS and $2.7\%$ mAP. Code is available at https://github.com/nullmax-vision/QAF2D.