Online Graph Completion: Multivariate Signal Recovery in Computer Vision.

Won Hwa Kim, Mona Jalal, Seongjae Hwang, Sterling C Johnson, Vikas Singh
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Abstract

The adoption of "human-in-the-loop" paradigms in computer vision and machine learning is leading to various applications where the actual data acquisition (e.g., human supervision) and the underlying inference algorithms are closely interwined. While classical work in active learning provides effective solutions when the learning module involves classification and regression tasks, many practical issues such as partially observed measurements, financial constraints and even additional distributional or structural aspects of the data typically fall outside the scope of this treatment. For instance, with sequential acquisition of partial measurements of data that manifest as a matrix (or tensor), novel strategies for completion (or collaborative filtering) of the remaining entries have only been studied recently. Motivated by vision problems where we seek to annotate a large dataset of images via a crowdsourced platform or alternatively, complement results from a state-of-the-art object detector using human feedback, we study the "completion" problem defined on graphs, where requests for additional measurements must be made sequentially. We design the optimization model in the Fourier domain of the graph describing how ideas based on adaptive submodularity provide algorithms that work well in practice. On a large set of images collected from Imgur, we see promising results on images that are otherwise difficult to categorize. We also show applications to an experimental design problem in neuroimaging.

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在线图形补全:计算机视觉中的多变量信号恢复
在计算机视觉和机器学习中采用 "人在回路中 "的范例导致了各种应用,在这些应用中,实际数据采集(如人工监督)和底层推理算法紧密交织在一起。当学习模块涉及分类和回归任务时,主动学习领域的经典工作提供了有效的解决方案,但许多实际问题,如部分观察测量、资金限制,甚至数据的额外分布或结构方面,通常都不在此处理范围内。例如,对于以矩阵(或张量)形式表现的数据的部分测量的连续获取,对剩余条目的完成(或协同过滤)的新策略直到最近才得到研究。受视觉问题的启发,我们试图通过众包平台为大型图像数据集添加注释,或者利用人类反馈对最先进的物体检测器的结果进行补充,因此我们研究了定义在图上的 "完成 "问题,在该问题中,必须按顺序请求额外的测量。我们在图的傅立叶域中设计了优化模型,描述了基于自适应亚模块化的想法如何提供在实践中行之有效的算法。在从 Imgur 收集的大量图片上,我们看到了在难以分类的图片上取得的可喜成果。我们还展示了在神经成像实验设计问题上的应用。
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