姿态不变嵌入

Chih-Hui Ho, Pedro Morgado, Amir Persekian, N. Vasconcelos
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引用次数: 11

摘要

研究了姿态不变性在图像识别和检索中的作用。根据嵌入的不变性水平,引入了嵌入的分类学分类,并用于澄清现有嵌入之间的联系,识别缺失的方法,并提出不变的概括。这导致了一种新的姿态不变嵌入(pie)家族,该家族源于现有的两种模型的组合方法,这两种模型来自于将cnn解释为类后验概率的估计器:视图到对象模型和对象到类模型。新的姿态不变模型在理论上和实验中都显示出有趣的特性,它们优于现有的多视图方法。最值得注意的是,它们在1)分类和检索以及2)单视图和多视图推理方面都取得了良好的性能。这些是设计真实视觉系统的重要属性,其中通用嵌入比特定任务嵌入更可取,并且在推理时通常无法获得多个图像。最后,介绍了一种新的真实物体的多视图数据集,该数据集是在复杂背景下的野外成像。我们认为,这是对广泛使用的合成数据集的一个急需的补充,将有助于多视图识别和检索的进步。
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PIEs: Pose Invariant Embeddings
The role of pose invariance in image recognition and retrieval is studied. A taxonomic classification of embeddings, according to their level of invariance, is introduced and used to clarify connections between existing embeddings, identify missing approaches, and propose invariant generalizations. This leads to a new family of pose invariant embeddings (PIEs), derived from existing approaches by a combination of two models, which follow from the interpretation of CNNs as estimators of class posterior probabilities: a view-to-object model and an object-to-class model. The new pose-invariant models are shown to have interesting properties, both theoretically and through experiments, where they outperform existing multiview approaches. Most notably, they achieve good performance for both 1) classification and retrieval, and 2) single and multiview inference. These are important properties for the design of real vision systems, where universal embeddings are preferable to task specific ones, and multiple images are usually not available at inference time. Finally, a new multiview dataset of real objects, imaged in the wild against complex backgrounds, is introduced. We believe that this is a much needed complement to the synthetic datasets in wide use and will contribute to the advancement of multiview recognition and retrieval.
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