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In defense of soft-assignment coding

机译:捍卫软分配编码

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摘要

In object recognition, soft-assignment coding enjoys computational efficiency and conceptual simplicity. However, its classification performance is inferior to the newly developed sparse or local coding schemes. It would be highly desirable if its classification performance could become comparable to the state-of-the-art, leading to a coding scheme which perfectly combines computational efficiency and classification performance. To achieve this, we revisit soft-assignment coding from two key aspects: classification performance and probabilistic interpretation. For the first aspect, we argue that the inferiority of soft-assignment coding is due to its neglect of the underlying manifold structure of local features. To remedy this, we propose a simple modification to localize the soft-assignment coding, which surprisingly achieves comparable or even better performance than existing sparse or local coding schemes while maintaining its computational advantage. For the second aspect, based on our probabilistic interpretation of the soft-assignment coding, we give a probabilistic explanation to the magic max-pooling operation, which has successfully been used by sparse or local coding schemes but still poorly understood. This probability explanation motivates us to develop a new mix-order max-pooling operation which further improves the classification performance of the proposed coding scheme. As experimentally demonstrated, the localized soft-assignment coding achieves the state-of-the-art classification performance with the highest computational efficiency among the existing coding schemes.
机译:在对象识别中,软分配编码具有计算效率和概念简单性。但是,其分类性能不如新开发的稀疏或局部编码方案。如果其分类性能可以与最新技术相媲美,从而产生一种将计算效率和分类性能完美结合的编码方案,将是非常可取的。为此,我们将从两个关键方面重新审视软分配编码:分类性能和概率解释。对于第一个方面,我们认为软分配编码的劣势是由于它忽略了局部特征的底层流形结构。为了解决这个问题,我们提出了一个简单的修改来对软分配编码进行本地化,这令人惊讶地实现了与现有的稀疏或局部编码方案相当甚至更好的性能,同时保持了其计算优势。对于第二个方面,基于对软分配编码的概率解释,我们对魔术最大池操作进行了概率解释,该方法已成功地用于稀疏或局部编码方案,但仍知之甚少。这种概率解释促使我们开发一种新的混合阶最大池操作,该操作进一步提高了所提出编码方案的分类性能。如实验所示,在现有编码方案中,本地化软分配编码以最高的计算效率实现了最新的分类性能。

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