CVAIApr 19, 2023

MMDR: A Result Feature Fusion Object Detection Approach for Autonomous System

arXiv:2304.09609v11 citationsh-index: 8
Originality Incremental advance
AI Analysis

This is an incremental improvement for autonomous systems, enhancing multimodal object detection by addressing feature fusion bottlenecks.

The paper tackles object detection in autonomous systems by proposing MMDR, a multimodal fusion approach that fuses result features from single modalities at a later stage, achieving improved representation and reduced missed detections.

Object detection has been extensively utilized in autonomous systems in recent years, encompassing both 2D and 3D object detection. Recent research in this field has primarily centered around multimodal approaches for addressing this issue.In this paper, a multimodal fusion approach based on result feature-level fusion is proposed. This method utilizes the outcome features generated from single modality sources, and fuses them for downstream tasks.Based on this method, a new post-fusing network is proposed for multimodal object detection, which leverages the single modality outcomes as features. The proposed approach, called Multi-Modal Detector based on Result features (MMDR), is designed to work for both 2D and 3D object detection tasks. Compared to previous multimodal models, the proposed approach in this paper performs feature fusion at a later stage, enabling better representation of the deep-level features of single modality sources. Additionally, the MMDR model incorporates shallow global features during the feature fusion stage, endowing the model with the ability to perceive background information and the overall input, thereby avoiding issues such as missed detections.

Foundations

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