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Utilizing Relevant RGB–D Data to Help Recognize RGB Images in the Target Domain

机译:利用相关的RGB-D数据来帮助识别目标域中的RGB图像

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摘要

With the advent of 3D cameras, getting depth information along with RGB images has been facilitated, which is helpful in various computer vision tasks. However, there are two challenges in using these RGB-D images to help recognize RGB images captured by conventional cameras: one is that the depth images are missing at the testing stage, the other is that the training and test data are drawn from different distributions as they are captured using different equipment. To jointly address the two challenges, we propose an asymmetrical transfer learning framework, wherein three classifiers are trained using the RGB and depth images in the source domain and RGB images in the target domain with a structural risk minimization criterion and regularization theory. A cross-modality co-regularizer is used to restrict the two-source classifier in a consistent manner to increase accuracy. Moreover, an L sub2,1/sub norm cross-domain co-regularizer is used to magnify significant visual features and inhibit insignificant ones in the weight vectors of the two RGB classifiers. Thus, using the cross-modality and cross-domain co-regularizer, the knowledge of RGB-D images in the source domain is transferred to the target domain to improve the target classifier. The results of the experiment show that the proposed method is one of the most effective ones.
机译:随着3D摄像机的出现,已经促进了与RGB图像一起获得深度信息,这有助于各种计算机视觉任务。然而,使用这些RGB-D图像有两个挑战,以帮助识别由传统相机捕获的RGB图像:一个是在测试阶段缺少深度图像,另一个是从不同的分布中汲取训练和测试数据因为它们使用不同的设备捕获。为了共同解决这两个挑战,我们提出了一种不对称的转移学习框架,其中使用RGB和源域中的深度图像和目标域中的RGB图像中的三种分类器具有结构风险最小化标准和正则化理论。跨模型共规则器用于以一致方式限制双源分类器以提高精度。此外,L 2,1 规范跨域共规则用于放大显着的视觉特征,并抑制两个RGB分类器的重量载体中的微不足道的视觉特征。因此,使用跨型号和跨域共规则器,源域中的RGB-D图像的知识被传送到目标域以改善目标分类器。实验结果表明,该方法是最有效的方法之一。

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