首页|基于混合知识蒸馏和特征增强技术的轻量级无解析式虚拟试衣网络

基于混合知识蒸馏和特征增强技术的轻量级无解析式虚拟试衣网络

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基于外观流的二维虚拟试衣技术存在着服装扭曲准确率低、纹理失真以及模型计算成本高等问题,提出了一种基于混合知识蒸馏和特征增强的轻量级无解析式虚拟试衣模型.首先,通过全局特征的融合与不同尺度下流场运算结果的校准,提出了改进后的外观流估计方法,提高外观流的估计精度;其次,采用知识蒸馏的方法对图像分割结果与虚拟试衣流程进行解耦,构建了基于深度可分离卷积的轻量级试衣网络;最后,提出了基于像素平均梯度的服装复杂度GTC指标量化分析服装的纹理复杂程度,以此为基础将VITON数据集划分为简易纹理集、较复杂纹理集和复杂纹理集.结果表明:提出的模型在图像质量评价指标(弗雷歇距离、感知图像块相似度、峰值信噪比、内核初始距离)上的分值较目前性能最优的模型均有所提升,能够有效提高服装扭曲准确度与试穿结果图像的质量,缓解服装纹理畸变与失真的问题,同时还拥有更小的模型尺寸和更快的运行推理速度.
Lightweight parser-free virtual try-on based on mixed knowledge distillation and feature enhancement techniques
Objective In order to address the issues of low accuracy in clothing deformation,texture distortion,and high computational costs in image-based virtual try-on systems,this paper proposes a lightweight parser-free virtual try-on based on mixed knowledge distillation and feature enhancement techniques.Method Firstly,by integrating global features and calibrating the results of flow computation at different scales,an improved appearance flow estimation method was proposed to enhance the accuracy of appearance flow estimation.Moreover,a lightweight try-on network based on depth separable convolution was constructed by decoupling image segmentation results and virtual try-on processes using knowledge distillation.Finally,a garment complexity index GTC(garment texture complexity)based on the pixel-wise average gradient was proposed to quantitatively analyze the texture complexity of clothing.Based on this,the VITON dataset is divided into a simple texture set,a moderately complex texture set,and a highly complex texture set.Results This paper used the VITON dataset to verify and analyze the proposed model.Compared with the SOTA(state-of-art)model,the number of parameters and computational complexity(flops)was decreased by 70.12%and 42.38%,respectively,suggesting a faster and better model to meet the deployment requirements of the mobile Internet.Moreover,the experimental results showed that the scores of the proposed model in image quality evaluation indicators(FID,LPIPS,PSNR,KID)were increased by 5.06%,28.57%,3.71%,and 33.33%,respectively,compared with the SOTA model.In the segmentation analysis of clothing complexity,the score of KID and LPIPS in this model was 48.08%,30.45%,1.03%,35.54%,30.41%,and 12.94%higher than that of the SOTA model,respectively,proving that the method proposed is superior to other methods in restoring and preserving original clothing details when warping clothing images with complex textures.Conclusion A lightweight parser-free virtual try-on based on mixed knowledge distillation and feature enhancement techniques is proposed,which uses an efficient appearance flow estimation method to reduce registration errors,complex texture loss,and distortion during the clothing distortion process.In addition,the method proposed is shown to reduce the size and computational complexity of the final model by mixing distillation and using depth-separable convolution effectively and speeding up the running of the model.Finally,a quantitative index used for characterizing the complexity of clothing texture is proposed and the VITON test set is divided into samples.Compared with other virtual try-on methods,the experimental results show that on the VITON test set,the evaluation index results obtained from the proposed method are better than the current virtual try-on method with the best performance,and the ability of the proposed method to deal with clothing with complex patterns is also better than other methods.In addition,the ablation experiment proves that the proposed method has an obvious improvement on the final virtual try-on result.

virtual try-onappearance flowknowledge distillationfeature enhancement techniquegarment texture complexityapparel e-commerce

侯珏、丁焕、杨阳、陆寅雯、余灵婕、刘正

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浙江理工大学服装学院,浙江杭州 310018

丝绸文化传承与产品设计数字化技术文旅部重点实验室,浙江杭州 310018

西安工程大学纺织科学与工程学院,陕西西安 710018

浙江理工大学国际时装技术学院,浙江杭州 310018

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虚拟试衣 外观流 知识蒸馏 特征增强技术 服装复杂度 服装电子商务

2024

纺织学报
中国纺织工程学会

纺织学报

CSTPCD北大核心
影响因子:0.699
ISSN:0253-9721
年,卷(期):2024.45(9)