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PARSIMONIOUS INFERENCE ON CONVOLUTIONAL NEURAL NETWORKS

机译:卷积神经网络的简约推论

摘要

The disclosed system incorporates a new learning module, the Learning Kernel Activation Module (LKAM), at least serving the purpose of enforcing the utilization of less convolutional kernels by learning kernel activation rules and by actually controlling the engagement of various computing elements: The exemplary module activates/deactivates a sub-set of filtering kernels, groups of kernels, or groups of full connected neurons, during the inference phase, on-the-fly for every input image depending on the input image content and the learned activation rules.
机译:所公开的系统并入了新的学习模块,即学习内核激活模块(LKAM),至少用于通过学习内核激活规则并通过实际控制各种计算元素的参与来加强对较少卷积内核的利用:在推理阶段,根据输入图像内容和学习到的激活规则,为每个输入图像即时激活/去激活过滤内核,内核组或完全连接的神经元组的子集。

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