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FoveaNet: Perspective-aware Urban Scene Parsing

FoveaNet: Perspective-aware Urban Scene Parsing

IEEE International Conference on Computer Vision (ICCV), 2017
8 August 2017
Xuzhao Li
Zequn Jie
Wei Wang
Changsong Liu
Jimei Yang
Xiaohui Shen
Zhe Lin
Qiang Chen
Shuicheng Yan
Jiashi Feng
    3DPC
ArXiv (abs)PDFHTML

Papers citing "FoveaNet: Perspective-aware Urban Scene Parsing"

24 / 24 papers shown
VPOcc: Exploiting Vanishing Point for 3D Semantic Occupancy Prediction
VPOcc: Exploiting Vanishing Point for 3D Semantic Occupancy Prediction
Junsu Kim
Junhee Lee
Ukcheol Shin
Jean Oh
Kyungdon Joo
3DPC
316
1
0
07 Aug 2024
Foveation in the Era of Deep Learning
Foveation in the Era of Deep LearningBritish Machine Vision Conference (BMVC), 2023
George Killick
Paul Henderson
Paul Siebert
Gerardo Aragon Camarasa
FedML
325
6
0
03 Dec 2023
Domain Adaptive Semantic Segmentation by Optimal Transport
Domain Adaptive Semantic Segmentation by Optimal TransportFundamental Research (FR), 2023
Yaqian Guo
Xiao Wang
Ce Li
Shihui Ying
OT
327
12
0
29 Mar 2023
Learned Two-Plane Perspective Prior based Image Resampling for Efficient
  Object Detection
Learned Two-Plane Perspective Prior based Image Resampling for Efficient Object DetectionComputer Vision and Pattern Recognition (CVPR), 2023
Anurag Ghosh
Dinesh Reddy Narapureddy
Christoph Mertz
S. Narasimhan
385
5
0
25 Mar 2023
Perspective Aware Road Obstacle Detection
Perspective Aware Road Obstacle DetectionIEEE Robotics and Automation Letters (RA-L), 2022
Krzysztof Lis
S. Honari
Pascal Fua
Mathieu Salzmann
308
10
0
04 Oct 2022
Consensus Synergizes with Memory: A Simple Approach for Anomaly
  Segmentation in Urban Scenes
Consensus Synergizes with Memory: A Simple Approach for Anomaly Segmentation in Urban Scenes
Jiazhong Cen
Zekun Jiang
Lingxi Xie
Qi Tian
Dongsheng Jiang
Wei Shen
320
8
0
24 Nov 2021
FBNet: Feature Balance Network for Urban-Scene Segmentation
FBNet: Feature Balance Network for Urban-Scene SegmentationIEEE International Conference on Multimedia and Expo (ICME), 2021
Lei Gan
Huabin Huang
Banghuai Li
Ye Yuan
139
1
0
05 Nov 2021
Semantic Segmentation for Urban-Scene Images
Semantic Segmentation for Urban-Scene Images
Shorya Sharma
SSeg
258
6
0
20 Oct 2021
HM-Net: A Regression Network for Object Center Detection and Tracking on
  Wide Area Motion Imagery
HM-Net: A Regression Network for Object Center Detection and Tracking on Wide Area Motion Imagery
Hakki Motorcu
H. Ateş
H. F. Ugurdag
B. Gunturk
164
9
0
19 Oct 2021
Standardized Max Logits: A Simple yet Effective Approach for Identifying
  Unexpected Road Obstacles in Urban-Scene Segmentation
Standardized Max Logits: A Simple yet Effective Approach for Identifying Unexpected Road Obstacles in Urban-Scene SegmentationIEEE International Conference on Computer Vision (ICCV), 2021
Sanghun Jung
Jungsoo Lee
Daehoon Gwak
Sungha Choi
Jaegul Choo
417
118
0
23 Jul 2021
A Multi-Level Approach to Waste Object Segmentation
A Multi-Level Approach to Waste Object SegmentationItalian National Conference on Sensors (INS), 2020
Tao Wang
Yuanzheng Cai
Lingyu Liang
Dongyi Ye
274
67
0
08 Jul 2020
X-ModalNet: A Semi-Supervised Deep Cross-Modal Network for
  Classification of Remote Sensing Data
X-ModalNet: A Semi-Supervised Deep Cross-Modal Network for Classification of Remote Sensing DataIsprs Journal of Photogrammetry and Remote Sensing (ISPRS J. Photogramm. Remote Sens.), 2020
Danfeng Hong
Xiangwei Zhu
Gui-Song Xia
J. Chanussot
X. Zhu
202
215
0
24 Jun 2020
Cars Can't Fly up in the Sky: Improving Urban-Scene Segmentation via
  Height-driven Attention Networks
Cars Can't Fly up in the Sky: Improving Urban-Scene Segmentation via Height-driven Attention NetworksComputer Vision and Pattern Recognition (CVPR), 2020
Sungha Choi
J. Kim
Jaegul Choo
SSeg
492
167
0
11 Mar 2020
Learning When and Where to Zoom with Deep Reinforcement Learning
Learning When and Where to Zoom with Deep Reinforcement LearningComputer Vision and Pattern Recognition (CVPR), 2020
Burak Uzkent
Stefano Ermon
293
79
0
01 Mar 2020
Learning a Layout Transfer Network for Context Aware Object Detection
Learning a Layout Transfer Network for Context Aware Object Detection
Tao Wang
Xuming He
Yuanzheng Cai
Guobao Xiao
174
7
0
09 Dec 2019
Sequential image processing methods for improving semantic video
  segmentation algorithms
Sequential image processing methods for improving semantic video segmentation algorithms
B. Sirmaçek
N. Botteghi
Santiago Sanchez Escalonilla Plaza
170
0
0
29 Oct 2019
WeatherNet: Recognising weather and visual conditions from street-level
  images using deep residual learning
WeatherNet: Recognising weather and visual conditions from street-level images using deep residual learning
M. Ibrahim
James Haworth
T. Cheng
203
82
0
22 Oct 2019
Boosting Real-Time Driving Scene Parsing with Shared Semantics
Boosting Real-Time Driving Scene Parsing with Shared SemanticsIEEE Robotics and Automation Letters (RA-L), 2019
Zhenzhen Xiang
Anbo Bao
Jie Li
Jianbo Su
SSeg
294
8
0
16 Sep 2019
Consensus Feature Network for Scene Parsing
Consensus Feature Network for Scene ParsingIEEE transactions on multimedia (IEEE TMM), 2019
Tianyi Wu
Sheng Tang
Rui Zhang
G. Guo
Yongdong Zhang
191
6
0
29 Jul 2019
SEMEDA: Enhancing Segmentation Precision with Semantic Edge Aware Loss
SEMEDA: Enhancing Segmentation Precision with Semantic Edge Aware LossPattern Recognition (Pattern Recognit.), 2019
Yifu Chen
Arnaud Dapogny
Matthieu Cord
SSeg
256
28
0
06 May 2019
Tree-structured Kronecker Convolutional Network for Semantic
  Segmentation
Tree-structured Kronecker Convolutional Network for Semantic Segmentation
Tianyi Wu
Sheng Tang
Rui Zhang
Juan Cao
Jintao Li
SSeg
265
37
0
12 Dec 2018
URBAN-i: From urban scenes to mapping slums, transport modes, and
  pedestrians in cities using deep learning and computer vision
URBAN-i: From urban scenes to mapping slums, transport modes, and pedestrians in cities using deep learning and computer vision
M. Ibrahim
James Haworth
T. Cheng
HAI
242
59
0
10 Sep 2018
Attention to Refine through Multi-Scales for Semantic Segmentation
Attention to Refine through Multi-Scales for Semantic SegmentationPacific Rim Conference on Multimedia (PCM), 2018
Shiqi Yang
G. Peng
SSeg
217
19
0
09 Jul 2018
Rethinking Atrous Convolution for Semantic Image Segmentation
Rethinking Atrous Convolution for Semantic Image Segmentation
Liang-Chieh Chen
George Papandreou
Florian Schroff
Hartwig Adam
SSeg
935
9,712
0
17 Jun 2017
1
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