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5 months ago

Delivering Arbitrary-Modal Semantic Segmentation

Jiaming Zhang; Ruiping Liu; Hao Shi; Kailun Yang; Simon Reiß; Kunyu Peng; Haodong Fu; Kaiwei Wang; Rainer Stiefelhagen

Delivering Arbitrary-Modal Semantic Segmentation

Abstract

Multimodal fusion can make semantic segmentation more robust. However, fusing an arbitrary number of modalities remains underexplored. To delve into this problem, we create the DeLiVER arbitrary-modal segmentation benchmark, covering Depth, LiDAR, multiple Views, Events, and RGB. Aside from this, we provide this dataset in four severe weather conditions as well as five sensor failure cases to exploit modal complementarity and resolve partial outages. To make this possible, we present the arbitrary cross-modal segmentation model CMNeXt. It encompasses a Self-Query Hub (SQ-Hub) designed to extract effective information from any modality for subsequent fusion with the RGB representation and adds only negligible amounts of parameters (~0.01M) per additional modality. On top, to efficiently and flexibly harvest discriminative cues from the auxiliary modalities, we introduce the simple Parallel Pooling Mixer (PPX). With extensive experiments on a total of six benchmarks, our CMNeXt achieves state-of-the-art performance on the DeLiVER, KITTI-360, MFNet, NYU Depth V2, UrbanLF, and MCubeS datasets, allowing to scale from 1 to 81 modalities. On the freshly collected DeLiVER, the quad-modal CMNeXt reaches up to 66.30% in mIoU with a +9.10% gain as compared to the mono-modal baseline. The DeLiVER dataset and our code are at: https://jamycheung.github.io/DELIVER.html.

Code Repositories

jamycheung/DELIVER
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
semantic-segmentation-on-bjroadCMNeXt
IoU: 63.22
semantic-segmentation-on-ddd17CMNeXt
mIoU: 72.67
semantic-segmentation-on-deliverCMNeXt (RGB-D-E-LiDAR)
mIoU: 66.30
semantic-segmentation-on-deliver-1CMNeXt (RGB-D-Event)
mIoU: 64.44
semantic-segmentation-on-deliver-1CMNeXt (RGB-LiDAR)
mIoU: 58.04
semantic-segmentation-on-deliver-1CMNeXt (RGB-D-LiDAR)
mIoU: 65.50
semantic-segmentation-on-deliver-1CMNeXt (RGB-Event)
mIoU: 57.48
semantic-segmentation-on-deliver-1CMNeXt (RGB-Depth)
mIoU: 63.58
semantic-segmentation-on-deliver-1CMNeXt (RGB-D-E-LiDAR)
mIoU: 66.30
semantic-segmentation-on-dsecCMNeXt
mIoU: 72.54
semantic-segmentation-on-kitti-360CMNeXt (RGB-D-E-LiDAR)
mIoU: 67.84
semantic-segmentation-on-mcubesCMNeXt (B2 RGB-A-D-N)
mIoU: 51.54%
semantic-segmentation-on-mcubesCMNeXt (B2 RGB-A-D)
mIoU: 49.48%
semantic-segmentation-on-mcubesCMNeXt (B2 RGB-A)
mIoU: 48.42%
semantic-segmentation-on-mcubes-pCMNeXt (B2 RGB-A)
mIoU: 48.42
semantic-segmentation-on-mcubes-pCMNeXt (B2 RGB-A-D)
mIoU: 49.48
semantic-segmentation-on-nyu-depth-v2CMNeXt (B4)
Mean IoU: 56.9%
semantic-segmentation-on-portoCMNeXt
IoU: 73.12
semantic-segmentation-on-tlcgisCMNeXt
IoU: 82.26
semantic-segmentation-on-urbanlfCMNeXt (RGB-LF33)
mIoU (Real): 82.62
mIoU (Syn): 80.98
semantic-segmentation-on-urbanlfCMNeXt (RGB-LF8)
mIoU (Real): 83.22
mIoU (Syn): 80.74
semantic-segmentation-on-urbanlfCMNeXt (RGB-LF80)
mIoU (Real): 83.11
mIoU (Syn): 81.02
thermal-image-segmentation-on-mfn-datasetCMNeXt (B4)
mIOU: 59.9
thermal-image-segmentation-on-noisy-rs-rgb-tCMNeXt (B4)
mIoU: 60.3

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Delivering Arbitrary-Modal Semantic Segmentation | Papers | HyperAI