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Proceedings ArticleDOI

Discriminative learning for automatic staging of placental maturity via multi-layer fisher vector

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TLDR
Experimental results demonstrate that the proposed MFV outperformed traditional methods for placental maturity staging and also achieves an area under the receiver of characteristics (AUC) of 96.77%, sensitivity of 98.04% and specificity of 93.75%, respectively.
Abstract
In this paper, a new method is proposed to automatically stage the placental maturity from B-mode ultrasound (US) images based on multi-layer Fisher vector (MFV) and densely sampled visual features. The proposed method first densely extracts visual features at a regular grid based on dense sampling instead of a few unreliable interest points. These features are clustered using generative Gaussian mixture model (GMM) to have soft clustering ability, and then learned discriminatively by Fisher vector (FV), which incorporates high-order statistics to enhance the staging accuracy. Differing from the previous studies, a multi-layer FV instead of a single layer FV is adopted in our method to exploit the spatial information of the features. Experimental results show that the proposed method achieves an area under the receiver of characteristics (AUC) of 96.77%, sensitivity of 98.04% and specificity of 93.75%, respectively, for staging placental maturity. Moreover, experimental results also demonstrate that the proposed MFV outperformed traditional methods for placental maturity staging.

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Citations
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References
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Proceedings ArticleDOI

Fisher Kernels on Visual Vocabularies for Image Categorization

TL;DR: This work shows that Fisher kernels can actually be understood as an extension of the popular bag-of-visterms, and proposes to apply this framework to image categorization where the input signals are images and where the underlying generative model is a visual vocabulary: a Gaussian mixture model which approximates the distribution of low-level features in images.
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Aggregating Local Image Descriptors into Compact Codes

TL;DR: This paper first presents and evaluates different ways of aggregating local image descriptors into a vector and shows that the Fisher kernel achieves better performance than the reference bag-of-visual words approach for any given vector dimension.
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