Search Results for author: Yuanyi Zhong

Found 16 papers, 6 papers with code

Improving Equivariance in State-of-the-Art Supervised Depth and Normal Predictors

1 code implementation ICCV 2023 Yuanyi Zhong, Anand Bhattad, Yu-Xiong Wang, David Forsyth

Dense depth and surface normal predictors should possess the equivariant property to cropping-and-resizing -- cropping the input image should result in cropping the same output image.

Data Augmentation

Contrastive Learning Relies More on Spatial Inductive Bias Than Supervised Learning: An Empirical Study

no code implementations ICCV 2023 Yuanyi Zhong, Haoran Tang, Jun-Kun Chen, Yu-Xiong Wang

Though self-supervised contrastive learning (CL) has shown its potential to achieve state-of-the-art accuracy without any supervision, its behavior still remains under investigated by academia.

Contrastive Learning Inductive Bias

Do Pre-trained Models Benefit Equally in Continual Learning?

1 code implementation27 Oct 2022 Kuan-Ying Lee, Yuanyi Zhong, Yu-Xiong Wang

Existing work on continual learning (CL) is primarily devoted to developing algorithms for models trained from scratch.

Continual Learning

SIRfyN: Single Image Relighting from your Neighbors

no code implementations8 Dec 2021 D. A. Forsyth, Anand Bhattad, Pranav Asthana, Yuanyi Zhong, YuXiong Wang

Novel theory shows that one can use similar scenes to estimate the different lightings that apply to a given scene, with bounded expected error.

Data Augmentation Image Relighting

Coordinate-wise Control Variates for Deep Policy Gradients

no code implementations11 Jul 2021 Yuanyi Zhong, Yuan Zhou, Jian Peng

The control variates (CV) method is widely used in policy gradient estimation to reduce the variance of the gradient estimators in practice.

Continuous Control

DAP: Detection-Aware Pre-training with Weak Supervision

1 code implementation CVPR 2021 Yuanyi Zhong, JianFeng Wang, Lijuan Wang, Jian Peng, Yu-Xiong Wang, Lei Zhang

This paper presents a detection-aware pre-training (DAP) approach, which leverages only weakly-labeled classification-style datasets (e. g., ImageNet) for pre-training, but is specifically tailored to benefit object detection tasks.

Classification General Classification +4

Boosting Weakly Supervised Object Detection with Progressive Knowledge Transfer

1 code implementation ECCV 2020 Yuanyi Zhong, Jian-Feng Wang, Jian Peng, Lei Zhang

In this paper, we propose an effective knowledge transfer framework to boost the weakly supervised object detection accuracy with the help of an external fully-annotated source dataset, whose categories may not overlap with the target domain.

Object object-detection +2

Disentangling Controllable Object through Video Prediction Improves Visual Reinforcement Learning

no code implementations21 Feb 2020 Yuanyi Zhong, Alexander Schwing, Jian Peng

In many vision-based reinforcement learning (RL) problems, the agent controls a movable object in its visual field, e. g., the player's avatar in video games and the robotic arm in visual grasping and manipulation.

Atari Games Object +3

Sequence Modeling of Temporal Credit Assignment for Episodic Reinforcement Learning

1 code implementation31 May 2019 Yang Liu, Yunan Luo, Yuanyi Zhong, Xi Chen, Qiang Liu, Jian Peng

Recent advances in deep reinforcement learning algorithms have shown great potential and success for solving many challenging real-world problems, including Go game and robotic applications.

reinforcement-learning Reinforcement Learning (RL)

Anchor Box Optimization for Object Detection

no code implementations2 Dec 2018 Yuanyi Zhong, Jian-Feng Wang, Jian Peng, Lei Zhang

In this paper, we propose a general approach to optimize anchor boxes for object detection.

Object object-detection +1

Towards End-to-End Face Recognition through Alignment Learning

no code implementations25 Jan 2017 Yuanyi Zhong, Jiansheng Chen, Bo Huang

Although these methods differ essentially in many aspects, a common practice of them is to specifically align the facial area based on the prior knowledge of human face structure before feature extraction.

Face Alignment Face Recognition

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