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tensorflow :: operaciones :: LRN
#include <nn_ops.h>
Normalización de la respuesta local.
Resumen
El tensor de input
4-D se trata como una matriz 3-D de vectores 1-D (a lo largo de la última dimensión) y cada vector se normaliza de forma independiente. Dentro de un vector dado, cada componente se divide por la suma ponderada al cuadrado de las entradas dentro de depth_radius
. En detalle,
sqr_sum[a, b, c, d] =
sum(input[a, b, c, d - depth_radius : d + depth_radius + 1] ** 2)
output = input / (bias + alpha * sqr_sum) ** beta
Para obtener más información, consulte Krizhevsky et al., Clasificación de ImageNet con redes neuronales convolucionales profundas (NIPS 2012) .
Argumentos:
- alcance: un objeto de alcance
- entrada: 4-D.
Atributos opcionales (consulte Attrs
):
- radio_profundidad: 0-D. Medio ancho de la ventana de normalización 1-D.
- sesgo: un desplazamiento (generalmente positivo para evitar dividir por 0).
- alfa: un factor de escala, generalmente positivo.
- beta: exponente.
Devoluciones:
Atributos públicos
Funciones publicas
nodo
::tensorflow::Node * node() const
operator::tensorflow::Input() const
operador :: tensorflow :: Salida
operator::tensorflow::Output() const
Funciones estáticas públicas
Alfa
Attrs Alpha(
float x
)
Beta
Attrs Beta(
float x
)
Parcialidad
Attrs Bias(
float x
)
DepthRadius
Attrs DepthRadius(
int64 x
)
Salvo que se indique lo contrario, el contenido de esta página está sujeto a la licencia Atribución 4.0 de Creative Commons, y los ejemplos de código están sujetos a la licencia Apache 2.0. Para obtener más información, consulta las políticas del sitio de Google Developers. Java es una marca registrada de Oracle o sus afiliados.
Última actualización: 2020-04-20 (UTC)
[null,null,["Última actualización: 2020-04-20 (UTC)"],[],[],null,["# tensorflow::ops::LRN Class Reference\n\ntensorflow::ops::LRN\n====================\n\n`#include \u003cnn_ops.h\u003e`\n\nLocal Response Normalization.\n\nSummary\n-------\n\nThe 4-D `input` tensor is treated as a 3-D array of 1-D vectors (along the last dimension), and each vector is normalized independently. Within a given vector, each component is divided by the weighted, squared sum of inputs within `depth_radius`. In detail, \n\n```scdoc\nsqr_sum[a, b, c, d] =\n sum(input[a, b, c, d - depth_radius : d + depth_radius + 1] ** 2)\noutput = input / (bias + alpha * sqr_sum) ** beta\n```\n\n\u003cbr /\u003e\n\nFor details, see [Krizhevsky et al., ImageNet classification with deep convolutional neural networks (NIPS 2012)](http://papers.nips.cc/paper/4824-imagenet-classification-with-deep-convolutional-neural-networks).\n\nArguments:\n\n- scope: A [Scope](/versions/r2.1/api_docs/cc/class/tensorflow/scope#classtensorflow_1_1_scope) object\n- input: 4-D.\n\n\u003cbr /\u003e\n\nOptional attributes (see [Attrs](/versions/r2.1/api_docs/cc/struct/tensorflow/ops/l-r-n/attrs#structtensorflow_1_1ops_1_1_l_r_n_1_1_attrs)):\n\n- depth_radius: 0-D. Half-width of the 1-D normalization window.\n- bias: An offset (usually positive to avoid dividing by 0).\n- alpha: A scale factor, usually positive.\n- beta: An exponent.\n\n\u003cbr /\u003e\n\nReturns:\n\n- [Output](/versions/r2.1/api_docs/cc/class/tensorflow/output#classtensorflow_1_1_output): The output tensor.\n\n\u003cbr /\u003e\n\n| ### Constructors and Destructors ||\n|---|---|\n| [LRN](#classtensorflow_1_1ops_1_1_l_r_n_1adbadf9462bc6ae9916f535bb2aa2762f)`(const ::`[tensorflow::Scope](/versions/r2.1/api_docs/cc/class/tensorflow/scope#classtensorflow_1_1_scope)` & scope, ::`[tensorflow::Input](/versions/r2.1/api_docs/cc/class/tensorflow/input#classtensorflow_1_1_input)` input)` ||\n| [LRN](#classtensorflow_1_1ops_1_1_l_r_n_1ab702d3657c46710fcf7a63f7c712c5df)`(const ::`[tensorflow::Scope](/versions/r2.1/api_docs/cc/class/tensorflow/scope#classtensorflow_1_1_scope)` & scope, ::`[tensorflow::Input](/versions/r2.1/api_docs/cc/class/tensorflow/input#classtensorflow_1_1_input)` input, const `[LRN::Attrs](/versions/r2.1/api_docs/cc/struct/tensorflow/ops/l-r-n/attrs#structtensorflow_1_1ops_1_1_l_r_n_1_1_attrs)` & attrs)` ||\n\n| ### Public attributes ||\n|-----------------------------------------------------------------------------------|---------------------------------------------------------------------------------------------------------|\n| [operation](#classtensorflow_1_1ops_1_1_l_r_n_1a001e6e41e5fb3ff78b42decdd680ea82) | [Operation](/versions/r2.1/api_docs/cc/class/tensorflow/operation#classtensorflow_1_1_operation) |\n| [output](#classtensorflow_1_1ops_1_1_l_r_n_1a69396918e55e1de00f68a1113ef173b0) | `::`[tensorflow::Output](/versions/r2.1/api_docs/cc/class/tensorflow/output#classtensorflow_1_1_output) |\n\n| ### Public functions ||\n|-----------------------------------------------------------------------------------------------------------------|------------------------|\n| [node](#classtensorflow_1_1ops_1_1_l_r_n_1aa28d07232c5df13dad811653f1276a2a)`() const ` | `::tensorflow::Node *` |\n| [operator::tensorflow::Input](#classtensorflow_1_1ops_1_1_l_r_n_1aa00d48e5a8ca805aa2532b7155b8c28b)`() const ` | ` ` ` ` |\n| [operator::tensorflow::Output](#classtensorflow_1_1ops_1_1_l_r_n_1ae58da447d50c92abb12785d8ab7b618b)`() const ` | ` ` ` ` |\n\n| ### Public static functions ||\n|------------------------------------------------------------------------------------------------|-------------------------------------------------------------------------------------------------------------------|\n| [Alpha](#classtensorflow_1_1ops_1_1_l_r_n_1a7788a93182ddfbf8bb5bd1820b081392)`(float x)` | [Attrs](/versions/r2.1/api_docs/cc/struct/tensorflow/ops/l-r-n/attrs#structtensorflow_1_1ops_1_1_l_r_n_1_1_attrs) |\n| [Beta](#classtensorflow_1_1ops_1_1_l_r_n_1a6bbb26306e2265f6e2368f5dfb39ef13)`(float x)` | [Attrs](/versions/r2.1/api_docs/cc/struct/tensorflow/ops/l-r-n/attrs#structtensorflow_1_1ops_1_1_l_r_n_1_1_attrs) |\n| [Bias](#classtensorflow_1_1ops_1_1_l_r_n_1ac8da24639c0d90ef6e68df756f3e345f)`(float x)` | [Attrs](/versions/r2.1/api_docs/cc/struct/tensorflow/ops/l-r-n/attrs#structtensorflow_1_1ops_1_1_l_r_n_1_1_attrs) |\n| [DepthRadius](#classtensorflow_1_1ops_1_1_l_r_n_1ac579054901f30ab7fd4989ca39237a0e)`(int64 x)` | [Attrs](/versions/r2.1/api_docs/cc/struct/tensorflow/ops/l-r-n/attrs#structtensorflow_1_1ops_1_1_l_r_n_1_1_attrs) |\n\n| ### Structs ||\n|---------------------------------------------------------------------------------------------|-------------------------------------------------------------------------------------------------------------------------------|\n| [tensorflow::ops::LRN::Attrs](/versions/r2.1/api_docs/cc/struct/tensorflow/ops/l-r-n/attrs) | Optional attribute setters for [LRN](/versions/r2.1/api_docs/cc/class/tensorflow/ops/l-r-n#classtensorflow_1_1ops_1_1_l_r_n). |\n\nPublic attributes\n-----------------\n\n### operation\n\n```text\nOperation operation\n``` \n\n### output\n\n```text\n::tensorflow::Output output\n``` \n\nPublic functions\n----------------\n\n### LRN\n\n```gdscript\n LRN(\n const ::tensorflow::Scope & scope,\n ::tensorflow::Input input\n)\n``` \n\n### LRN\n\n```gdscript\n LRN(\n const ::tensorflow::Scope & scope,\n ::tensorflow::Input input,\n const LRN::Attrs & attrs\n)\n``` \n\n### node\n\n```gdscript\n::tensorflow::Node * node() const \n``` \n\n### operator::tensorflow::Input\n\n```gdscript\n operator::tensorflow::Input() const \n``` \n\n### operator::tensorflow::Output\n\n```gdscript\n operator::tensorflow::Output() const \n``` \n\nPublic static functions\n-----------------------\n\n### Alpha\n\n```text\nAttrs Alpha(\n float x\n)\n``` \n\n### Beta\n\n```text\nAttrs Beta(\n float x\n)\n``` \n\n### Bias\n\n```text\nAttrs Bias(\n float x\n)\n``` \n\n### DepthRadius\n\n```text\nAttrs DepthRadius(\n int64 x\n)\n```"]]