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Systems and methods of entomology classification based on extracted anatomies

机译:基于提取的解剖学的昆虫学分类系统和方法

摘要

A method of identifying a living creature includes training a convolutional neural network model using pretrained convolutional neural networks to generate proposals about the regions where there might be an anatomical object within a digital image. Introducing a residual connection to get the input from the previous layer to the next layer helps in solving gradient vanishing problem. The next step is to design an object detector network that does three tasks: classifying the boxes with respective anatomies, tightening the boxes, and generating a mask (i.e., pixel-wise segmentation) of each anatomical component. In constructing the architecture of the object detector network, the network uses per-pixel sigmoid, and binary cross-entropy loss function (to identify the k anatomical components) and rigorously train them.
机译:识别生物的方法包括使用普罗维拉卷积神经网络训练卷积神经网络模型,以生成关于在数字图像内可能是解剖物体的区域的提案。引入残余连接以使从上一层到下一层的输入有助于解决渐变消失问题。下一步是设计一种对象检测器网络,该网络执行三个任务:将盒子分类为各自的解剖,拧紧框,并生成每个解剖组件的掩模(即像素 - 方向分段)。在构建物体检测器网络的架构时,网络使用每个像素秒形,并且二进制交叉熵损耗函数(以识别K解剖组件)并严格训练它们。

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