通过学习信息丰富的、受生物学启发的视觉特征来识别对象

Yang Wu, Nanning Zheng, Qubo You, S. Du
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引用次数: 2

摘要

本文提出了一种新的、有效的方法,通过学习信息视觉特征来提高生物动机模型的目标识别性能。原始模型在学习特征时存在明显的瓶颈。因此,我们提出了一种谨慎的算法来解决这个问题。首先设计一个新的信息因子,为每张图像寻找信息量最大的特征,然后根据附加信息选择互补特征。最后,使用类内聚类策略为每个类别选择最典型的特征。通过整合其他两个改进,我们的算法比目前基于相同模型的任何其他系统都表现得更好。
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Object Recognition by Learning Informative, Biologically Inspired Visual Features
This paper presents a novel, effective way to improve the object recognition performance of a biologically-motivated model by learning informative visual features. The original model has an obvious bottleneck when learning features. Therefore, we propose a circumspect algorithm to solve this problem. First, a novel information factor was designed to find the most informative feature for each image, and then complementary features were selected based on additional information. Finally, an intra-class clustering strategy was used to select the most typical features for each category. By integrating two other improvements, our algorithm performs better than any other system so far based on the same model.
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