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Semi-Automatically Labeling Objects in Images

机译:半自动标记图像中的对象

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Labeling objects in images plays a crucial role in many visual learning and recognition applications that need training data, such as image retrieval, object detection and recognition. Manually creating object labels in images is time consuming and, thus, becomes impossible for labeling a large image dataset. In this paper, we present a family of semi-automatic methods based on a graph-based semi-supervised learning algorithm for labeling objects in images. We first present SmartLabel that proposes to label images with reduced human input by iteratively computing the harmonic solutions to minimize a quadratic energy function on the Gaussian fields. SmartLabel tackles the problem of lacking negative data in the learning by embedding relevance feedback after the first iteration, which also leads to one limitation of SmartLabel—needing additional human supervision. To overcome the limitation and enhance SmartLabel, we propose SmartLabel-2 that utilizes a novel scheme to sample negative examples automatically, replace regular patch partitioning in SmartLabel by quadtree partitioning and applies image over-segmentation (superpixels) to extract smooth object contours. Evaluation on six diverse object categories have indicated that SmartLabel-2 can achieve promising results with a small amount of labeled data (e.g., 1%–5% of image size) and obtain close-to-fine extraction of object contours on different kinds of objects.
机译:在图像中标记对象在许多需要训练数据的视觉学习和识别应用程序中扮演着至关重要的角色,例如图像检索,对象检测和识别。在图像中手动创建对象标签非常耗时,因此无法为大型图像数据集添加标签。在本文中,我们提出了一系列基于图的半监督学习算法的半自动方法,用于标记图像中的对象。我们首先介绍SmartLabel,它建议通过迭代计算谐波解决方案以最小化高斯场上的二次能量函数来标记具有减少的人为输入的图像。 SmartLabel通过在第一次迭代后嵌入相关性反馈来解决学习中缺乏负面数据的问题,这也导致SmartLabel的一个局限性-需要额外的人工监督。为了克服该限制并增强SmartLabel,我们提出了SmartLabel-2,它利用一种新颖的方案自动对负样本进行采样,通过四叉树分区替换SmartLabel中的常规补丁分区,并应用图像过度分割(超像素)来提取平滑的对象轮廓。对六种不同对象类别的评估表明,SmartLabel-2可以通过少量标记数据(例如,图像大小的1%–5%)获得令人满意的结果,并可以在不同种类的物体上获得精细的对象轮廓提取对象。

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