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Zero-Shot Object Detection: Learning to Simultaneously Recognize and Localize Novel Concepts

机译:零发物体检测:学习同时识别和本地化新概念

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Current Zero-Shot Learning (ZSL) approaches are restricted to recognition of a single dominant unseen object category in a test image. We hypothesize that this setting is ill-suited for real-world applications where unseen objects appear only as a part of a complex scene, warranting both 'recognition' and 'localization' of an unseen category. To address this limitation, we introduce a new 'Zero-Shot Detection' (ZSD) problem setting, which aims at simultaneously recognizing and locating object instances belonging to novel categories without any training examples. We also propose a new experimental protocol for ZSD based on the highly challenging ILSVRC dataset, adhering to practical issues, e.g., the rarity of unseen objects. To the best of our knowledge, this is the first end-to-end deep network for ZSD that jointly models the interplay between visual and semantic domain information. To overcome the noise in the automatically derived semantic descriptions, we utilize the concept of meta-classes to design an original loss function that achieves synergy between max-margin class separation and semantic space clustering. Furthermore, we present a baseline approach extended from recognition to ZSD setting. Our extensive experiments show significant performance boost over the baseline on the imperative yet difficult ZSD problem.
机译:当前的零射击学习(ZSL)方法仅限于识别测试图像中的单个显性看不见的物体类别。我们假设此设置不适用于实际应用,在这些应用中,看不见的对象仅作为复杂场景的一部分出现,从而保证了对看不见类别的“识别”和“定位”。为了解决此限制,我们引入了一种新的“零位攻击检测”(ZSD)问题设置,旨在同时识别和定位属于新颖类别的对象实例,而无需任何训练实例。我们还基于极具挑战性的ILSVRC数据集提出了一种针对ZSD的新实验协议,该协议遵循一些实际问题,例如看不见的物体的稀有性。据我们所知,这是ZSD的第一个端到端深度网络,可以联合建模可视域和语义域信息之间的相互作用。为了克服自动派生的语义描述中的干扰,我们利用元类的概念来设计原始的损失函数,以实现最大余量类分离与语义空间聚类之间的协同作用。此外,我们提出了从识别扩展到ZSD设置的基线方法。我们广泛的实验表明,在必不可少的ZSD问题上,性能大大超过了基线。

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