Adaptive-Mask Fusion Network for Segmentation of Drivable Road and Negative Obstacle With Untrustworthy Features

04/27/2023
by   Zhen Feng, et al.
0

Segmentation of drivable roads and negative obstacles is critical to the safe driving of autonomous vehicles. Currently, many multi-modal fusion methods have been proposed to improve segmentation accuracy, such as fusing RGB and depth images. However, we find that when fusing two modals of data with untrustworthy features, the performance of multi-modal networks could be degraded, even lower than those using a single modality. In this paper, the untrustworthy features refer to those extracted from regions (e.g., far objects that are beyond the depth measurement range) with invalid depth data (i.e., 0 pixel value) in depth images. The untrustworthy features can confuse the segmentation results, and hence lead to inferior results. To provide a solution to this issue, we propose the Adaptive-Mask Fusion Network (AMFNet) by introducing adaptive-weight masks in the fusion module to fuse features from RGB and depth images with inconsistency. In addition, we release a large-scale RGB-depth dataset with manually-labeled ground truth based on the NPO dataset for drivable roads and negative obstacles segmentation. Extensive experimental results demonstrate that our network achieves state-of-the-art performance compared with other networks. Our code and dataset are available at: https://github.com/lab-sun/AMFNet.

READ FULL TEXT

page 1

page 3

page 4

page 6

research
03/09/2022

Fast Road Segmentation via Uncertainty-aware Symmetric Network

The high performance of RGB-D based road segmentation methods contrasts ...
research
08/25/2020

Adaptive Context-Aware Multi-Modal Network for Depth Completion

Depth completion aims to recover a dense depth map from the sparse depth...
research
07/16/2023

CalibNet: Dual-branch Cross-modal Calibration for RGB-D Salient Instance Segmentation

We propose a novel approach for RGB-D salient instance segmentation usin...
research
08/30/2019

Multi-Modal Fusion for End-to-End RGB-T Tracking

We propose an end-to-end tracking framework for fusing the RGB and TIR m...
research
03/22/2021

TICaM: A Time-of-flight In-car Cabin Monitoring Dataset

We present TICaM, a Time-of-flight In-car Cabin Monitoring dataset for v...
research
04/26/2022

Learning Weighting Map for Bit-Depth Expansion within a Rational Range

Bit-depth expansion (BDE) is one of the emerging technologies to display...
research
06/09/2017

Multi-Modal Obstacle Detection in Unstructured Environments with Conditional Random Fields

Reliable obstacle detection and classification in rough and unstructured...

Please sign up or login with your details

Forgot password? Click here to reset