Search Results for author: Feng Xue

Found 25 papers, 19 papers with code

SM4Depth: Seamless Monocular Metric Depth Estimation across Multiple Cameras and Scenes by One Model

1 code implementation13 Mar 2024 Yihao Liu, Feng Xue, Anlong Ming

Third, to reduce the reliance on massive training data, we propose a ``divide and conquer" solution.

Depth Estimation

Exploiting Low-level Representations for Ultra-Fast Road Segmentation

1 code implementation4 Feb 2024 Huan Zhou, Feng Xue, Yucong Li, Shi Gong, Yiqun Li, Yu Zhou

The spatial detail branch is firstly designed to extract low-level feature representation for the road by the first stage of ResNet-18.

Road Segmentation

MuSc: Zero-Shot Industrial Anomaly Classification and Segmentation with Mutual Scoring of the Unlabeled Images

1 code implementation30 Jan 2024 Xurui Li, Ziming Huang, Feng Xue, Yu Zhou

We reveal that the abundant normal and abnormal cues implicit in unlabeled test images can be exploited for anomaly determination, which is ignored by prior methods.

Anomaly Classification

FDINet: Protecting against DNN Model Extraction via Feature Distortion Index

no code implementations20 Jun 2023 Hongwei Yao, Zheng Li, Haiqin Weng, Feng Xue, Kui Ren, Zhan Qin

FDINET exhibits the capability to identify colluding adversaries with an accuracy exceeding 91%.

Model extraction

Unknown Sniffer for Object Detection: Don't Turn a Blind Eye to Unknown Objects

1 code implementation CVPR 2023 Wenteng Liang, Feng Xue, Yihao Liu, Guofeng Zhong, Anlong Ming

The recently proposed open-world object and open-set detection have achieved a breakthrough in finding never-seen-before objects and distinguishing them from known ones.

Object object-detection +2

LipFormer: Learning to Lipread Unseen Speakers based on Visual-Landmark Transformers

no code implementations4 Feb 2023 Feng Xue, Yu Li, Deyin Liu, Yincen Xie, Lin Wu, Richang Hong

However, generalizing these methods to unseen speakers incurs catastrophic performance degradation due to the limited number of speakers in training bank and the evident visual variations caused by the shape/color of lips for different speakers.

Lipreading Sentence

Boosting Out-of-Distribution Detection with Multiple Pre-trained Models

1 code implementation24 Dec 2022 Feng Xue, Zi He, Chuanlong Xie, Falong Tan, Zhenguo Li

This advance raises a natural question: Can we leverage the diversity of multiple pre-trained models to improve the performance of post hoc detection methods?

Out-of-Distribution Detection Out of Distribution (OOD) Detection

MEGCF: Multimodal Entity Graph Collaborative Filtering for Personalized Recommendation

1 code implementation14 Oct 2022 Kang Liu, Feng Xue, Dan Guo, Le Wu, Shujie Li, Richang Hong

This paper aims at solving the mismatch problem between MFE and UIM, so as to generate high-quality embedding representations and better model multimodal user preferences.

Collaborative Filtering Image Classification

Joint Multi-grained Popularity-aware Graph Convolution Collaborative Filtering for Recommendation

1 code implementation10 Oct 2022 Kang Liu, Feng Xue, Xiangnan He, Dan Guo, Richang Hong

In this work, we propose to model multi-grained popularity features and jointly learn them together with high-order connectivity, to match the differentiation of user preferences exhibited in popularity features.

Collaborative Filtering Recommendation Systems

Multivariate Time Series Anomaly Detection with Few Positive Samples

1 code implementation2 Jul 2022 Feng Xue, Weizhong Yan

This practical situation calls for methodologies to leverage these small number of anomaly events to create a better anomaly detector.

Anomaly Detection Time Series +1

MAD: Self-Supervised Masked Anomaly Detection Task for Multivariate Time Series

1 code implementation4 May 2022 Yiwei Fu, Feng Xue

Our experimental results demonstrate that MAD can achieve better anomaly detection rates over traditional NSP approaches when using exactly the same neural network (NN) base models, and can be modified to run as fast as NSP models during test time on the same hardware, thus making it an ideal upgrade for many existing NSP-based NN anomaly detection models.

Anomaly Detection Self-Supervised Learning +2

MARF: Multiscale Adaptive-switch Random Forest for Leg Detection with 2D Laser Scanners

no code implementations14 Apr 2022 Tianxi Wang, Feng Xue, Yu Zhou, Anlong Ming

Moreover, we further apply the proposed MARF to the people detection and tracking system, achieving a considerable gain in all metrics.

Binary Classification

Fast Road Segmentation via Uncertainty-aware Symmetric Network

1 code implementation9 Mar 2022 Yicong Chang, Feng Xue, Fei Sheng, Wenteng Liang, Anlong Ming

The high performance of RGB-D based road segmentation methods contrasts with their rare application in commercial autonomous driving, which is owing to two reasons: 1) the prior methods cannot achieve high inference speed and high accuracy in both ways; 2) the different properties of RGB and depth data are not well-exploited, limiting the reliability of predicted road.

Autonomous Driving Road Segmentation

Monocular Depth Distribution Alignment with Low Computation

1 code implementation9 Mar 2022 Fei Sheng, Feng Xue, Yicong Chang, Wenteng Liang, Anlong Ming

In this paper, we model the majority of accuracy contrast between them as the difference of depth distribution, which we call "Distribution drift".

Monocular Depth Estimation

Tiny Obstacle Discovery by Occlusion-Aware Multilayer Regression

1 code implementation17 Nov 2021 Feng Xue, Anlong Ming, Yu Zhou

Edges are the fundamental visual element for discovering tiny obstacles using a monocular camera.

regression

Noise Doesn't Lie: Towards Universal Detection of Deep Inpainting

no code implementations3 Jun 2021 Ang Li, Qiuhong Ke, Xingjun Ma, Haiqin Weng, Zhiyuan Zong, Feng Xue, Rui Zhang

A promising countermeasure against such forgeries is deep inpainting detection, which aims to locate the inpainted regions in an image.

Image Inpainting

Boundary-induced and scene-aggregated network for monocular depth prediction

1 code implementation26 Feb 2021 Feng Xue, Junfeng Cao, Yu Zhou, Fei Sheng, Yankai Wang, Anlong Ming

However, two issues remain unresolved: (1) The deep feature encodes the wrong farthest region in a scene, which leads to a distorted 3D structure of the predicted depth; (2) The low-level features are insufficient utilized, which makes it even harder to estimate the depth near the edge with sudden depth change.

Depth Estimation Depth Prediction +1

RGCF: Refined Graph Convolution Collaborative Filtering with concise and expressive embedding

1 code implementation7 Jul 2020 Kang Liu, Feng Xue, Richang Hong

In this work, we develop a new GCN-based Collaborative Filtering model, named Refined Graph convolution Collaborative Filtering(RGCF), where the construction of the embeddings of users (items) are delicately redesigned from several aspects during the aggregation on the graph.

Collaborative Filtering

Toward Hierarchical Self-Supervised Monocular Absolute Depth Estimation for Autonomous Driving Applications

1 code implementation12 Apr 2020 Feng Xue, Guirong Zhuo, Ziyuan Huang, Wufei Fu, Zhuoyue Wu, Marcelo H. Ang Jr

Our contributions are twofold: a) a novel dense connected prediction (DCP) layer is proposed to provide better object-level depth estimation and b) specifically for autonomous driving scenarios, dense geometrical constrains (DGC) is introduced so that precise scale factor can be recovered without additional cost for autonomous vehicles.

Autonomous Driving Monocular Depth Estimation +1

Occlusion-shared and Feature-separated Network for Occlusion Relationship Reasoning

1 code implementation ICCV 2019 Rui Lu, Feng Xue, Menghan Zhou, Anlong Ming, Yu Zhou

On one hand, considering the relevance between edge and orientation, two sub-networks are designed to share the occlusion cue.

A Novel Multi-layer Framework for Tiny Obstacle Discovery

2 code implementations23 Apr 2019 Feng Xue, Anlong Ming, Menghan Zhou, Yu Zhou

For tiny obstacle discovery in a monocular image, edge is a fundamental visual element.

Deep Item-based Collaborative Filtering for Top-N Recommendation

1 code implementation11 Nov 2018 Feng Xue, Xiangnan He, Xiang Wang, Jiandong Xu, Kai Liu, Richang Hong

In this work, we propose a more expressive ICF solution by accounting for the nonlinear and higher-order relationship among items.

Collaborative Filtering Decision Making +1

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