## BinaryConvolution {#openvino_docs_ops_convolution_BinaryConvolution_1} **Versioned name**: *BinaryConvolution-1* **Category**: *Convolution* **Short description**: Computes 2D convolution of binary input and binary kernel tensors. **Detailed description**: The operation behaves as regular *Convolution* but uses specialized algorithm for computations on binary data. More thorough explanation can be found in [Understanding Binary Neural Networks](https://sushscience.wordpress.com/2017/10/01/understanding-binary-neural-networks/) and [Bitwise Neural Networks](https://saige.sice.indiana.edu/wp-content/uploads/icml2015_mkim.pdf). Computation algorithm for mode *xnor-popcount*: - `X = XNOR(input_patch, filter)`, where XNOR is bitwise operation on two bit streams - `P = popcount(X)`, where popcount is the number of `1` bits in the `X` bit stream - `Output = 2 * P - B`, where `B` is the total number of bits in the `P` bit stream **Attributes**: * *strides* * **Description**: *strides* is a distance (in pixels) to slide the filter on the feature map over the `(y, x)` axes for 2D convolutions. For example, *strides* equal `2,1` means sliding the filter 2 pixel at a time over height dimension and 1 over width dimension. * **Range of values**: integer values starting from 0 * **Type**: int[] * **Default value**: None * **Required**: *yes* * *pads_begin* * **Description**: *pads_begin* is a number of pixels to add to the beginning along each axis. For example, *pads_begin* equal `1,2` means adding 1 pixel to the top of the input and 2 to the left of the input. * **Range of values**: integer values starting from 0 * **Type**: int[] * **Default value**: None * **Required**: *yes* * **Note**: the attribute is ignored when *auto_pad* attribute is specified. * *pads_end* * **Description**: *pads_end* is a number of pixels to add to the ending along each axis. For example, *pads_end* equal `1,2` means adding 1 pixel to the bottom of the input and 2 to the right of the input. * **Range of values**: integer values starting from 0 * **Type**: int[] * **Default value**: None * **Required**: *yes* * **Note**: the attribute is ignored when *auto_pad* attribute is specified. * *dilations* * **Description**: *dilations* denotes the distance in width and height between elements (weights) in the filter. For example, *dilation* equal `1,1` means that all the elements in the filter are neighbors, so it is the same as for the usual convolution. *dilation* equal `2,2` means that all the elements in the filter are matched not to adjacent elements in the input matrix, but to those that are adjacent with distance 1. * **Range of values**: integer value starting from 0 * **Type**: int[] * **Default value**: None * **Required**: *yes* * *mode* * **Description**: *mode* defines how input tensor `0/1` values and weights `0/1` are interpreted as real numbers and how the result is computed. * **Range of values**: * *xnor-popcount* * **Type**: `string` * **Default value**: None * **Required**: *yes* * **Note**: value `0` in inputs is interpreted as `-1`, value `1` as `1` * *pad_value* * **Description**: *pad_value* is a floating-point value used to fill pad area. * **Range of values**: a floating-point number * **Type**: `float` * **Default value**: None * **Required**: *yes* * *auto_pad* * **Description**: *auto_pad* how the padding is calculated. Possible values: * *explicit* - use explicit padding values from *pads_begin* and *pads_end*. * *same_upper* - the input is padded to match the output size. In case of odd padding value an extra padding is added at the end. * *same_lower* - the input is padded to match the output size. In case of odd padding value an extra padding is added at the beginning. * *valid* - do not use padding. * **Type**: string * **Default value**: explicit * **Required**: *no* * **Note**: *pads_begin* and *pads_end* attributes are ignored when *auto_pad* is specified. **Inputs**: * **1**: Input tensor of type *T1* and rank 4. Layout is NCYX (number of batches, number of channels, spatial axes Y, X). Required. * **2**: Kernel tensor of type *T2* and rank 4. Layout is OIYX (number of output channels, number of input channels, spatial axes Y, X). Required. * **Note**: Interpretation of tensor values is defined by *mode* attribute. **Outputs**: * **1**: Output tensor of type *T3* and rank 4. Layout is NOYX (number of batches, number of kernel output channels, spatial axes Y, X). **Types**: * *T1*: floating point type with values `0` or `1`. * *T2*: `u1` type with binary values `0` or `1`. * *T3*: *T1* type with full range of values. **Example**: 2D Convolution ```xml 1 3 224 224 64 3 5 5 1 64 224 224 ```