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Food image segmentation using edge adaptive based deep-CNNs

机译:使用边缘自适应基于CNN的食物图像分割

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Purpose - Indian food recognition can be considered as a case of fine-grained type visual recognition, where the several photos of same category generally have significant variability. Therefore, effective segmentation and classification technique is required to identify the particular cuisines and fine-grained analysis. The paper aims to discuss this issue. Design/methodology/approach - In this paper, the authors provided an effective segmentation approach through the proposed edge adaptive (EA)-deep convolutional neural networks (DCNNs) model, where each input images are divided into patches in order to provide much efficient and accurate structural description of data. Findings - EA-DCNNs starts with developing a coarse map of feature that obtained through DCNN, afterwards EA model is applied to construct the final segmented image. Originality/value - The training model of EA-DCNN consists of pooling, rectified linear unit and convolution, which help convolutional network to optimize the performance of segmentation in a significant extent, which is much practical and relevant in the context of food image segmentation.
机译:目的 - 印度食品识别可以被视为细粒度类型视觉识别的情况,其中相同类别的几张照片通常具有显着的变化。因此,需要有效的分割和分类技术来识别特定的美食和细粒度分析。本文旨在讨论这个问题。设计/方法/方法 - 在本文中,作者通过所提出的边缘自适应(EA) - DEP卷积神经网络(DCNNS)模型提供了有效的分割方法,其中每个输入图像被分成贴片,以便提供更高效的准确的数据结构描述。发现 - EA-DCNN开始开发通过DCNN获得的粗糙图形,然后应用EA模型来构造最终分段图像。原创性/值 - EA-DCNN的培训模型包括汇集,整流的线性单元和卷积,这有助于卷积网络在很大程度上在很大程度上优化分割性能,这在食物图像分割的背景下具有很大的实用性和相关性。

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