多类识别和部分定位与人的循环

C. Wah, Steve Branson, P. Perona, Serge J. Belongie
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引用次数: 188

摘要

我们提出了一个专为细粒度视觉分类设计的视觉识别系统。该系统由一台机器和一个用户组成。用户无法自己完成识别任务,交互地要求用户提供两种异构形式的信息:点击对象部分和回答二进制问题。机器智能地选择最具信息量的问题向用户提出,以便尽快识别对象的类别。通过利用计算机视觉和分析用户响应,所需的人力总工作量(以秒为单位)被最小化。我们在一个具有挑战性的未裁剪图像数据集上展示了有希望的结果,与以前的方法相比,实现了显著的人力平均减少。
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Multiclass recognition and part localization with humans in the loop
We propose a visual recognition system that is designed for fine-grained visual categorization. The system is composed of a machine and a human user. The user, who is unable to carry out the recognition task by himself, is interactively asked to provide two heterogeneous forms of information: clicking on object parts and answering binary questions. The machine intelligently selects the most informative question to pose to the user in order to identify the object's class as quickly as possible. By leveraging computer vision and analyzing the user responses, the overall amount of human effort required, measured in seconds, is minimized. We demonstrate promising results on a challenging dataset of uncropped images, achieving a significant average reduction in human effort over previous methods.
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