State Space Models Meet Remote Sensing: A Survey
Pith reviewed 2026-06-25 21:15 UTC · model grok-4.3
The pith
State space models are reviewed for their applications in remote sensing tasks with linear complexity for long-range dependencies.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
The paper presents a comprehensive review of SSM-based approaches in remote sensing, covering most of the relevant studies since SSMs were first introduced to the field. It offers a multi-dimensional analysis examining SSM applications in remote sensing tasks and discussing advancements in architecture design. This paper not only synthesizes the rapid progress in SSM-based research but also identifies key challenges and future opportunities, aiming to serve as a foundational resource for remote sensing researchers and offer actionable insights to foster further advancements.
What carries the argument
State Space Models (SSMs) for long-range modeling, which deliver linear computational complexity while capturing long-range dependencies in remote sensing data.
Load-bearing premise
The authors have successfully identified and included essentially all relevant SSM papers in remote sensing since the models' introduction to the domain.
What would settle it
Discovery of one or more significant published papers applying state space models to remote sensing that are omitted from both the survey text and the linked GitHub repository would falsify the coverage claim.
read the original abstract
State Space Models (SSMs), designed for long-range modeling, offer linear computational complexity and strong capabilities in capturing long-range dependencies. In the field of remote sensing, SSMs have gained popularity due to their effectiveness in addressing unique challenges such as dense visual predictions, multi-modal remote sensing data, and temporal remote sensing data, which have also yielded significant advancements in customized architectures. This paper presents a comprehensive review of SSM-based approaches in remote sensing, covering most of the relevant studies since SSMs were first introduced to the field. We offer a multi-dimensional analysis examining SSM applications in remote sensing tasks and discussing advancements in architecture design. This paper not only synthesizes the rapid progress in SSM-based research but also identifies key challenges and future opportunities. By providing a detailed perspective, this paper aims to serve as a foundational resource for remote sensing researchers, offering actionable insights to foster further advancements in this evolving domain. We will keep tracing related works at https://github.com/QinzheYang/Awesome-RS-State-Space-Model.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The paper claims to deliver a comprehensive survey of State Space Models (SSMs) in remote sensing, covering most relevant studies since their introduction to the field. It provides a multi-dimensional analysis of SSM applications across remote sensing tasks (dense visual predictions, multi-modal data, temporal data) and architecture advancements, synthesizes progress, identifies challenges and future opportunities, and maintains an updated GitHub repository of works.
Significance. If the coverage claim holds, the survey would be a useful foundational resource for remote sensing researchers by organizing the rapid growth of SSM adaptations and offering actionable insights on architecture design. The commitment to an ongoing GitHub list (https://github.com/QinzheYang/Awesome-RS-State-Space-Model) is a concrete strength that supports currency and reproducibility of the review.
major comments (1)
- [Abstract and Introduction] Abstract and Introduction: The central claim that the paper presents a 'comprehensive review' covering 'most of the relevant studies' is not supported by any description of the literature search methodology. No search strings, databases (e.g., arXiv, IEEE Xplore, Google Scholar), date ranges, inclusion/exclusion criteria, or PRISMA-style flow diagram are provided. This directly undermines evaluation of the breadth and accuracy assertions that define the survey's value.
minor comments (2)
- The multi-dimensional analysis structure (tasks vs. architectures) is mentioned but would benefit from an explicit taxonomy diagram or table early in the paper to help readers navigate the review.
- The GitHub repository is referenced but its scope, update frequency, and relationship to the paper's included studies are not described in the text.
Simulated Author's Rebuttal
We thank the referee for the constructive comment and for recognizing the potential value of the survey. We agree that methodological transparency is important and will revise the manuscript to address this concern.
read point-by-point responses
-
Referee: [Abstract and Introduction] Abstract and Introduction: The central claim that the paper presents a 'comprehensive review' covering 'most of the relevant studies' is not supported by any description of the literature search methodology. No search strings, databases (e.g., arXiv, IEEE Xplore, Google Scholar), date ranges, inclusion/exclusion criteria, or PRISMA-style flow diagram are provided. This directly undermines evaluation of the breadth and accuracy assertions that define the survey's value.
Authors: We agree that a clear description of the literature search process is necessary to support claims of comprehensiveness. The original manuscript did not include such details. In the revised version we will add a dedicated subsection (likely in the Introduction) that specifies the databases searched (Google Scholar, arXiv, IEEE Xplore), the search strings and keywords employed, the date range considered, inclusion/exclusion criteria, and the overall selection workflow. We will also include a PRISMA-style flow diagram or equivalent summary of paper counts at each stage. This addition will directly address the referee's concern and strengthen the survey's credibility. revision: yes
Circularity Check
No circularity: survey paper contains no derivations or fitted quantities
full rationale
This is a literature review surveying SSM applications in remote sensing. It contains no equations, no parameter fitting, no predictions derived from inputs, and no derivation chain of any kind. All enumerated circularity patterns require the presence of such mathematical or predictive steps that reduce to self-definition or self-citation; none are present. The completeness claim about coverage of papers is an empirical assertion about literature search (not a derivation), and the GitHub link is external. The work is therefore self-contained with score 0.
Axiom & Free-Parameter Ledger
Reference graph
Works this paper leans on
-
[1]
Mamba: Linear-time sequence modeling with selective state spaces
Gu A, Dao T. Mamba: Linear-time sequence modeling with selective state spaces. In First conference on language modeling, 2024
2024
-
[2]
Poolingformer: Long document modeling with pooling attention
Zhang H, Gong Y, Shen Y, et al. Poolingformer: Long document modeling with pooling attention. International Conference on Machine Learning, 2021: 12437–12446
2021
-
[3]
Flashattention: Fast and memory-efficient exact attention with io-awareness
Dao T, Fu D, Ermon S, et al. Flashattention: Fast and memory-efficient exact attention with io-awareness. Advances in Neural Information Processing Systems, 2022, 35: 16344–16359
2022
-
[4]
Fastformer: Additive attention can be all you need
Wu C, Wu F, Qi T, et al. Fastformer: Additive attention can be all you need. ArXiv preprint arXiv:2108.09084, 2021
arXiv 2021
-
[5]
Longformer: The long-document transformer
Beltagy I, Peters M E, Cohan A. Longformer: The long-document transformer. ArXiv preprint arXiv:2004.05150, 2020
Pith/arXiv arXiv 2004
-
[6]
An adaptive dual-supervised cross-deep dependency network for pixel-wise classification
Ma W, Chen C, Ma M, et al. An adaptive dual-supervised cross-deep dependency network for pixel-wise classification. IEEE Transactions on Geoscience and Remote Sensing, 2025
2025
-
[7]
Rsprompter: Learning to prompt for remote sensing instance segmentation based on visual foundation model
Chen K, Liu C, Chen H, et al. Rsprompter: Learning to prompt for remote sensing instance segmentation based on visual foundation model. IEEE Transactions on Geoscience and Remote Sensing, 2024
2024
-
[8]
Fastformer: transformer-based fast reasoning framework
Zhu W, Guo L, Zhang T, et al. Fastformer: transformer-based fast reasoning framework. Fourteenth International Conference on Graphics and Image Processing (ICGIP 2022), 2023, 12705, 378–387
2022
-
[9]
Masked-attention mask transformer for universal image segmentation
Cheng B, Misra I, Schwing A G, et al. Masked-attention mask transformer for universal image segmentation. Proceedings of the IEEE/CVF conference on computer vision and pattern recognition, 2022: 1290–1299
2022
-
[10]
Object detection in 20 years: A survey
Zou Z, Chen K, Shi Z, et al. Object detection in 20 years: A survey. Proceedings of the IEEE, 2023, 111: 257–276
2023
-
[11]
A survey on object detection in optical remote sensing images
Cheng G, Han J. A survey on object detection in optical remote sensing images. ISPRS journal of photogrammetry and remote sensing, 2016, 117: 11–28
2016
-
[12]
Foundation models defining a new era in vision: a survey and outlook
Awais M, Naseer M, Khan S, et al. Foundation models defining a new era in vision: a survey and outlook. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2025
2025
-
[13]
You only look once: Unified, real-time object detection
Redmon J. You only look once: Unified, real-time object detection. Proceedings of the IEEE conference on computer vision and pattern recognition, 2016
2016
-
[14]
Yolo9000: better, faster, stronger
Redmon J, Farhadi A. Yolo9000: better, faster, stronger. Proceedings of the IEEE conference on computer vision and pattern recognition, 2017: 7263–7271
2017
-
[15]
Ssd: Single shot multibox detector
Liu W, Anguelov D, Erhan D, et al. Ssd: Single shot multibox detector. Computer Vision–ECCV 2016: 14th European Conference, 2016: 21-37
2016
-
[16]
Imagenet classification with deep convolutional neural networks
Krizhevsky A, Sutskever I, Hinton G E. Imagenet classification with deep convolutional neural networks. Advances in neural information processing systems, 2012, 25
2012
-
[17]
Deep residual learning for image recognition
He K, Zhang X, Ren S, et al. Deep residual learning for image recognition. Proceedings of the IEEE conference on computer vision and pattern recognition, 2016: 770–778
2016
-
[18]
Mitigating representation bias for class-incremental semantic segmentation of remote sensing images
Sun X, Weng X, Pang C, et al. Mitigating representation bias for class-incremental semantic segmentation of remote sensing images. Science China Information Sciences, 2025, 68: 182301
2025
-
[19]
Efficiently modeling long sequences with structured state spaces
Gu A, Goel K, R \'e C. Efficiently modeling long sequences with structured state spaces. ArXiv preprint arXiv:2111.00396, 2021
Pith/arXiv arXiv 2021
-
[20]
Bansal S, Madisetty S, Rehman M Z U, et al. A comprehensive survey of mamba architectures for medical image analysis: Classification, segmentation, restoration and beyond. ArXiv preprint arXiv:2410.02362, 2024
arXiv 2024
-
[21]
Almrr: Anomaly localization mamba on industrial textured surface with feature reconstruction and refinement
Qu S, Tao X, Qu Z, et al. Almrr: Anomaly localization mamba on industrial textured surface with feature reconstruction and refinement. Chinese Conference on Pattern Recognition and Computer Vision (PRCV), 2024: 378–391
2024
-
[22]
Tian W, Zeng H, Zhao Y P, et al. Empowering snapshot compressive imaging: Spatial-spectral state space model with across-scanning and local enhancement. ArXiv preprint arXiv:2408.00629, 2024
arXiv 2024
-
[23]
Li H, Hu Q, Yao Y, et al. Cfmw: Cross-modality fusion mamba for multispectral object detection under adverse weather conditions. ArXiv preprint arXiv:2404.16302, 2024
arXiv 2024
-
[24]
E-mamba: Using state-space-models for direct event processing in space situational awareness
D \' az A H, Davidson R, Eckersley S, et al. E-mamba: Using state-space-models for direct event processing in space situational awareness. IAA Conference on AI in and for Space (SPAICE), 2024: 509-514
2024
-
[25]
Dim: Diffusion mamba for efficient high-resolution image synthesis
Teng Y, Wu Y, Shi H, et al. Dim: Diffusion mamba for efficient high-resolution image synthesis. ArXiv preprint arXiv:2405.14224, 2024
arXiv 2024
-
[26]
Videomamba: State space model for efficient video understanding
Li K, Li X, Wang Y, et al. Videomamba: State space model for efficient video understanding. European Conference on Computer Vision, 2024: 237–255
2024
-
[27]
Cdmamba: Incorporating local clues into mamba for remote sensing image binary change detection
Zhang H, Chen K, Liu C, et al. Cdmamba: Incorporating local clues into mamba for remote sensing image binary change detection. IEEE Transactions on Geoscience and Remote Sensing, 2025
2025
-
[28]
Rethinking scanning strategies with vision mamba in semantic segmentation of remote sensing imagery: an experimental study
Zhu Q, Fang Y, Cai Y, et al. Rethinking scanning strategies with vision mamba in semantic segmentation of remote sensing imagery: an experimental study. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 2024
2024
-
[29]
Mamba in vision: A comprehensive survey of techniques and applications
Rahman M M, Tutul A A, Nath A, et al. Mamba in vision: A comprehensive survey of techniques and applications. ArXiv preprint arXiv:2410.03105, 2024
arXiv 2024
-
[30]
From single-to multi-modal remote sensing imagery interpretation: A survey and taxonomy
Sun X, Tian Y, Lu W, et al. From single-to multi-modal remote sensing imagery interpretation: A survey and taxonomy. Science China Information Sciences, 2023, 66: 140301
2023
-
[31]
Jamba: Hybrid transformer-mamba language models
Lenz B, Lieber O, Arazi A, et al. Jamba: Hybrid transformer-mamba language models. The Thirteenth International Conference on Learning Representations, 2025
2025
-
[32]
Cobra: Extending mamba to multi-modal large language model for efficient inference
Zhao H, Zhang M, Zhao W, et al. Cobra: Extending mamba to multi-modal large language model for efficient inference. Proceedings of the AAAI Conference on Artificial Intelligence, 2025, 39: 10421–10429
2025
-
[33]
Multi-static isac based on network-assisted full-duplex cellfree networks: Performance analysis and duplex mode optimization
Zeng F, Liu R, Sun X, et al. Multi-static isac based on network-assisted full-duplex cellfree networks: Performance analysis and duplex mode optimization. Science China Information Sciences, 2025, 68: 150303
2025
-
[34]
A survey on hyperspectral image restoration: From the view of low-rank tensor approximation
Liu N, Li W, Wang Y, et al. A survey on hyperspectral image restoration: From the view of low-rank tensor approximation. Science China Information Sciences, 2023, 66: 140302
2023
-
[35]
Multimodal hyperspectral remote sensing: An overview and perspective
Gu Y, Liu T, Gao G, et al. Multimodal hyperspectral remote sensing: An overview and perspective. Science China Information Sciences, 2021, 64: 121301
2021
-
[36]
A Unified Framework with Multimodal Fine-tuning for Remote Sensing Semantic Segmentation
Ma X, Zhang X, Pun MO, et al. A Unified Framework with Multimodal Fine-tuning for Remote Sensing Semantic Segmentation. IEEE Transactions on Geoscience and Remote Sensing, 2025
2025
-
[37]
Qu H, Ning L, An R, et al. A survey of mamba. ArXiv preprint arXiv:2408.01129, 2024
Pith/arXiv arXiv 2024
-
[38]
A survey on vision mamba: Models, applications and challenges
Xu R, Yang S, Wang Y, et al. A survey on vision mamba: Models, applications and challenges. ArXiv preprint arXiv:2404.18861, 2024
arXiv 2024
-
[39]
A survey on visual mamba
Zhang H, Zhu Y, Wang D, et al. A survey on visual mamba. Applied Sciences, 2024, 14: 5683
2024
-
[40]
An image is worth 16x16 words: Transformers for image recognition at scale
Dosovitskiy A. An image is worth 16x16 words: Transformers for image recognition at scale. ArXiv preprint arXiv:2010.11929, 2020
Pith/arXiv arXiv 2010
-
[41]
Vision mamba: Efficient visual representation learning with bidirectional state space model
Zhu L, Liao B, Zhang Q, et al. Vision mamba: Efficient visual representation learning with bidirectional state space model. ArXiv preprint arXiv:2401.09417, 2024
Pith/arXiv arXiv 2024
-
[42]
Pan-mamba: Effective pan-sharpening with state space model
He X, Cao K, Zhang J, et al. Pan-mamba: Effective pan-sharpening with state space model. Information Fusion, 2025, 115: 102779
2025
-
[43]
Dmm: Disparity-guided multispectral mamba for oriented object detection in remote sensing
Zhou M, Li T, Qiao C, et al. Dmm: Disparity-guided multispectral mamba for oriented object detection in remote sensing. IEEE Transactions on Geoscience and Remote Sensing, 2025
2025
-
[44]
Rs-mamba for large remote sensing image dense prediction
Zhao S, Chen H, Zhang X, et al. Rs-mamba for large remote sensing image dense prediction. IEEE Transactions on Geoscience and Remote Sensing, 2024
2024
-
[45]
Changemamba: Remote sensing change detection with spatio-temporal state space model
Chen H, Song J, Han C, et al. Changemamba: Remote sensing change detection with spatio-temporal state space model. IEEE Transactions on Geoscience and Remote Sensing, 2024
2024
-
[46]
A mamba-based siamese network for remote sensing change detection
Paranjape J N, Melo C D, Patel V M. A mamba-based siamese network for remote sensing change detection. 2025 IEEE/CVF Winter Conference on Applications of Computer Vision (WACV), 2025: 1186–1196
2025
-
[47]
Vision mamba in remote sensing: A comprehensive survey of techniques, applications and outlook
Bao M, Lyu S, Xu Z, et al. Vision mamba in remote sensing: A comprehensive survey of techniques, applications and outlook. ArXiv preprint arXiv:2505.00630, 2025
arXiv 2025
-
[48]
John Wiley & Sons, 1998
Fairman F W, Linear control theory: the state space approach. John Wiley & Sons, 1998
1998
-
[49]
Forecast of electricity consumption and economic growth in taiwan by state space modeling
Pao H. Forecast of electricity consumption and economic growth in taiwan by state space modeling. Energy, 2009, 34: 1779–1791
2009
-
[50]
State-space system identification of robot manipulator dynamics, Mechatronics, 2000, 10: 403–418
Johansson R, Robertsson A, Nilsson K, et al. State-space system identification of robot manipulator dynamics, Mechatronics, 2000, 10: 403–418
2000
-
[51]
On the parameterization and initialization of diagonal state space models
Gu A, Goel K, Gupta A, et al. On the parameterization and initialization of diagonal state space models. Advances in Neural Information Processing Systems, 2022, 35: 35971–35983
2022
-
[52]
Hippo: Recurrent memory with optimal polynomial projections
Gu A, Dao T, Ermon S, et al. Hippo: Recurrent memory with optimal polynomial projections. Advances in neural information processing systems, 2020, 33: 1474–1487
2020
-
[53]
Vmamba: Visual state space model
Liu Y, Tian Y, Zhao Y, et al. Vmamba: Visual state space model. Advances in neural information processing systems, 2024, 37: 103031–103063
2024
-
[54]
Rsmamba: Remote sensing image classification with state space model
Chen K, Chen B, Liu C, et al. Rsmamba: Remote sensing image classification with state space model. IEEE Geoscience and Remote Sensing Letters, 2024
2024
-
[55]
Yang J X, Zhou J, Wang J, et al. Hsimamba: Hyperpsectral imaging efficient feature learning with bidirectional state space for classification. ArXiv preprint arXiv:2404.00272, 2024
arXiv 2024
-
[56]
Spectralmamba: Efficient mamba for hyperspectral image classification
Yao J, Hong D, Li C, et al. Spectralmamba: Efficient mamba for hyperspectral image classification. ArXiv preprint arXiv:2404.08489, 2024
arXiv 2024
-
[57]
S ˆ2 mamba: A spatial-spectral state space model for hyperspectral image classification
Wang G, Zhang X, Peng Z, et al. S ˆ2 mamba: A spatial-spectral state space model for hyperspectral image classification. IEEE Transactions on Geoscience and Remote Sensing, 2025
2025
-
[58]
Spectral-spatial mamba for hyperspectral image classification
Huang L, Chen Y, He X. Spectral-spatial mamba for hyperspectral image classification. ArXiv preprint arXiv:2404.18401, 2024
arXiv 2024
-
[59]
Mamba-in-mamba: Centralized mamba-cross-scan in tokenized mamba model for hyperspectral image classification
Zhou W, Kamata S, Wang H, et al. Mamba-in-mamba: Centralized mamba-cross-scan in tokenized mamba model for hyperspectral image classification. Neurocomputing, 2025, 613: 128751
2025
-
[60]
3dss-mamba: 3d-spectral-spatial mamba for hyperspectral image classification
He Y, Tu B, Liu B, et al. 3dss-mamba: 3d-spectral-spatial mamba for hyperspectral image classification. IEEE Transactions on Geoscience and Remote Sensing, 2024
2024
-
[61]
State space models meet transformers for hyperspectral image classification
Shi X, Zhang Y, Liu K, et al. State space models meet transformers for hyperspectral image classification. Signal Processing, 2025, 226: 109669
2025
-
[62]
Dualmamba: A lightweight spectral-spatial mamba-convolution network for hyperspectral image classification
Sheng J, Zhou J, Wang J, et al. Dualmamba: A lightweight spectral-spatial mamba-convolution network for hyperspectral image classification. IEEE Transactions on Geoscience and Remote Sensing, 2024
2024
-
[63]
Joint classification of hyperspectral and lidar data base on mamba
Liao D, Wang Q, Lai T, et al. Joint classification of hyperspectral and lidar data base on mamba. IEEE Transactions on Geoscience and Remote Sensing, 2024
2024
-
[64]
Graphmamba: An efficient graph structure learning vision mamba for hyperspectral image classification
Yang A, Li M, Ding Y, et al. Graphmamba: An efficient graph structure learning vision mamba for hyperspectral image classification. IEEE Transactions on Geoscience and Remote Sensing. 2024
2024
-
[65]
Multi-head spatial-spectral mamba for hyperspectral image classification
Ahmad M, Butt M H F, Usama M, et al. Multi-head spatial-spectral mamba for hyperspectral image classification. ArXiv preprint arXiv:2408.01224, 2024
arXiv 2024
-
[66]
Wavemamba: Spatial-spectral wavelet mamba for hyperspectral image classification
Ahmad M, Usama M, Mazzara M, et al. Wavemamba: Spatial-spectral wavelet mamba for hyperspectral image classification. IEEE Geoscience and Remote Sensing Letters, 2024
2024
-
[67]
Spatial–spectral morphological mamba for hyperspectral image classification
Ahmad M, Butt M H F, Khan A M, et al. Spatial–spectral morphological mamba for hyperspectral image classification. Neurocomputing, 2025, 636: 129995
2025
-
[68]
Msfmamba: Multi-scale feature fusion state space model for multi-source remote sensing image classification
Gao F, Jin X, Zhou X, et al. Msfmamba: Multi-scale feature fusion state space model for multi-source remote sensing image classification. IEEE Transactions on Geoscience and Remote Sensing, 2025
2025
-
[69]
A local enhanced mamba network for hyperspectral image classification
Wang C, Huang J, Lv M, et al. A local enhanced mamba network for hyperspectral image classification. International Journal of Applied Earth Observation and Geoinformation, 2024, 133: 104092
2024
-
[70]
Mim-istd: Mamba-in-mamba for efficient infrared small target detection
Chen T, Ye Z, Tan Z, et al. Mim-istd: Mamba-in-mamba for efficient infrared small target detection. IEEE Transactions on Geoscience and Remote Sensing, 2024
2024
-
[71]
Ren K, Wu X, Xu L, et al. Remotedet-mamba: A hybrid mamba-cnn network for multi-modal object detection in remote sensing images. ArXiv preprint arXiv:2410.13532, 2024
arXiv 2024
-
[72]
Mamba-moc: A multicategory remote object counting via state space model
Liu P, Lei S, Li H C. Mamba-moc: A multicategory remote object counting via state space model. ArXiv preprint arXiv:2501.06697, 2025
arXiv 2025
-
[73]
Htd-mamba: Efficient hyperspectral target detection with pyramid state space model
Shen D, Zhu X, Tian J, et al. Htd-mamba: Efficient hyperspectral target detection with pyramid state space model. IEEE Transactions on Geoscience and Remote Sensing, 2025
2025
-
[74]
Mask-guided mamba fusion for drone-based visible-infrared vehicle detection
Wang S, Wang C, Shi C, et al. Mask-guided mamba fusion for drone-based visible-infrared vehicle detection. IEEE Transactions on Geoscience and Remote Sensing, 2024
2024
-
[75]
Rs 3 mamba: Visual state space model for remote sensing image semantic segmentation
Ma X, Zhang X, Pun M O. Rs 3 mamba: Visual state space model for remote sensing image semantic segmentation. IEEE Geoscience and Remote Sensing Letters, 2024
2024
-
[76]
Cm-unet: Hybrid cnn-mamba unet for remote sensing image semantic segmentation
Liu M, Dan J, Lu Z, et al. Cm-unet: Hybrid cnn-mamba unet for remote sensing image semantic segmentation. ArXiv preprint arXiv:2405.10530, 2024
arXiv 2024
-
[77]
Wang L, Li D, Dong S, et al. Pyramidmamba: Rethinking pyramid feature fusion with selective space state model for semantic segmentation of remote sensing imagery. ArXiv preprint arXiv:2406.10828, 2024
arXiv 2024
-
[78]
Oe-bevseg: An object informed and environment aware multimodal framework for bird’s-eye-view vehicle semantic segmentation
Sun J, Dai Y, Vong C M, et al. Oe-bevseg: An object informed and environment aware multimodal framework for bird’s-eye-view vehicle semantic segmentation. IEEE Transactions on Intelligent Transportation Systems, 2025
2025
-
[79]
A novel mamba architecture with a semantic transformer for efficient real-time remote sensing semantic segmentation
Ding H, Xia B, Liu W, et al. A novel mamba architecture with a semantic transformer for efficient real-time remote sensing semantic segmentation. Remote Sensing, 2024, 16: 2620
2024
-
[80]
Samba: Semantic segmentation of remotely sensed images with state space model
Zhu Q, Cai Y, Fang Y, et al. Samba: Semantic segmentation of remotely sensed images with state space model. Heliyon, 2024
2024
discussion (0)
Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.