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Extracting regions of interest from biological images with convolutional sparse block coding

机译:卷积稀疏块编码从生物图像中提取感兴趣区域

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Biological tissue is often composed of cells with similar morphologies replicated throughout large volumes and many biological applications rely on the accurate identification of these cells and their locations from image data. Here we develop a generative model that captures the regularities present in images composed of repeating elements of a few different types. Formally, the model can be described as convolutional sparse block coding. For inference we use a variant of convolutional matching pursuit adapted to block-based representations. We extend the K-SVD learning algorithm to subspaces by retaining several principal vectors from the SVD decomposition instead of just one. Good models with little cross-talk between subspaces can be obtained by learning the blocks incrementally. We perform extensive experiments on simulated images and the inference algorithm consistently recovers a large proportion of the cells with a small number of false positives. We fit the convolutional model to noisy GCaMP6 two-photon images of spiking neurons and to Nissl-stained slices of cortical tissue and show that it recovers cell body locations without supervision. The flexibility of the block-based representation is reflected in the variability of the recovered cell shapes.
机译:生物组织通常由大量复制的具有相似形态的细胞组成,许多生物应用依赖于从图像数据中准确识别这些细胞及其位置。在这里,我们开发了一个生成模型,该模型捕获了由几种不同类型的重复元素组成的图像中存在的规律性。形式上,该模型可以描述为卷积稀疏块编码。为了进行推断,我们使用了卷积匹配追踪的一种变体,该变体适合于基于块的表示形式。通过保留SVD分解中的几个主要向量而不是一个,我们将K-SVD学习算法扩展到子空间。通过逐步学习这些块,可以获得子空间之间串扰很小的良好模型。我们在模拟图像上进行了广泛的实验,推理算法不断地恢复了大部分带有少量误报的细胞。我们将卷积模型拟合到尖刺神经元的嘈杂GCaMP6两光子图像和皮质组织的Nissl染色切片,并显示该卷积模型无需监督即可恢复细胞体位置。基于块的表示的灵活性反映在恢复的单元格形状的可变性中。

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