基于相关性的外观和形状的判别对象类模型

S. Savarese, J. Winn, A. Criminisi
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引用次数: 241

摘要

提出了一种结合外观和形状信息的对象类模型。通过视觉词的分布来建模对象的外观最近被证明是成功的。在这里,基于外观的模型通过捕捉视觉单词的空间排列而得到增强。通过引入自适应矢量量化相关图(我们称之为相关性),实现了不损失识别的紧凑空间建模。利用积分图像进一步提高了效率。我们的新模型对几何变换、严重遮挡和信息缺失的鲁棒性也得到了证明。针对在一般条件下查看的大量对象类别的现有数据库,评估了所提出模型的识别准确性,并显示优于仅外观模型。
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Discriminative Object Class Models of Appearance and Shape by Correlatons
This paper presents a new model of object classes which incorporates appearance and shape information jointly. Modeling objects appearance by distributions of visual words has recently proven successful. Here appearancebased models are augmented by capturing the spatial arrangement of visual words. Compact spatial modeling without loss of discrimination is achieved through the introduction of adaptive vector quantized correlograms, which we call correlatons. Efficiency is further improved by means of integral images. The robustness of our new models to geometric transformations, severe occlusions and missing information is also demonstrated. The accuracy of discrimination of the proposed models is assessed with respect to existing databases with large numbers of object classes viewed under general conditions, and shown to outperform appearance-only models.
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