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Binary and multi-class classification systems and methods using connectionist temporal classification

机译:使用连接主义时间分类的二元和多分类系统和方法

摘要

A classification training system for binary and multi-class classification comprises a neural network operable to perform classification of input data, a training dataset including pre-segmented, labeled training samples, and a classification training module operable to train the neural network using the training dataset. The classification training module includes a forward pass processing module, and a backward pass processing module. The backward pass processing module is operable to determine whether a current frame is in a region of target (ROT), determine ROT information such as beginning and length of the ROT and update weights and biases using a cross-entropy cost function and connectionist temporal classification cost function. The backward pass module further computes a soft target value using ROT information and computes a signal output error using the soft target value and network output value.
机译:用于二进制和多类别分类的分类训练系统包括可操作以对输入数据进行分类的神经网络,包括预先分段的,加标签的训练样本的训练数据集以及可操作以使用训练数据集训练神经网络的分类训练模块。分类训练模块包括前向通过处理模块和后向通过处理模块。反向传递处理模块可用于确定当前帧是否在目标(ROT)区域中,确定ROT信息(例如ROT的开始和长度),并使用交叉熵代价函数和连接主义的时间分类来更新权重和偏差。成本函数。反向传递模块还使用ROT信息计算软目标值,并使用软目标值和网络输出值计算信号输出误差。

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