1use alloc::format;
2
3use burn_core as burn;
4
5use crate::PaddingConfig2d;
6use burn::config::Config;
7use burn::module::Initializer;
8use burn::module::{Content, DisplaySettings, Ignored, Module, ModuleDisplay, Param};
9use burn::tensor::Tensor;
10use burn::tensor::backend::Backend;
11use burn::tensor::module::conv2d;
12use burn::tensor::ops::ConvOptions;
13
14use crate::conv::checks;
15
16#[derive(Config, Debug)]
18pub struct Conv2dConfig {
19 pub channels: [usize; 2],
21 pub kernel_size: [usize; 2],
23 #[config(default = "[1, 1]")]
25 pub stride: [usize; 2],
26 #[config(default = "[1, 1]")]
28 pub dilation: [usize; 2],
29 #[config(default = "1")]
31 pub groups: usize,
32 #[config(default = "PaddingConfig2d::Valid")]
38 pub padding: PaddingConfig2d,
39 #[config(default = true)]
41 pub bias: bool,
42 #[config(
44 default = "Initializer::KaimingUniform{gain:1.0/num_traits::Float::sqrt(3.0),fan_out_only:false}"
45 )]
46 pub initializer: Initializer,
47}
48
49#[derive(Module, Debug)]
53#[module(custom_display)]
54pub struct Conv2d<B: Backend> {
55 pub weight: Param<Tensor<B, 4>>,
57 pub bias: Option<Param<Tensor<B, 1>>>,
59 pub stride: [usize; 2],
61 pub kernel_size: [usize; 2],
63 pub dilation: [usize; 2],
65 pub groups: usize,
67 pub padding: Ignored<PaddingConfig2d>,
69}
70
71impl Conv2dConfig {
72 pub fn init<B: Backend>(&self, device: &B::Device) -> Conv2d<B> {
74 checks::checks_channels_div_groups(self.channels[0], self.channels[1], self.groups);
75 if self.padding == PaddingConfig2d::Same {
76 checks::check_same_padding_support(&self.kernel_size);
77 }
78
79 let shape = [
80 self.channels[1],
81 self.channels[0] / self.groups,
82 self.kernel_size[0],
83 self.kernel_size[1],
84 ];
85
86 let k = self.kernel_size.iter().product::<usize>();
87 let fan_in = self.channels[0] / self.groups * k;
88 let fan_out = self.channels[1] / self.groups * k;
89
90 let weight = self
91 .initializer
92 .init_with(shape, Some(fan_in), Some(fan_out), device);
93 let mut bias = None;
94
95 if self.bias {
96 bias = Some(self.initializer.init_with(
97 [self.channels[1]],
98 Some(fan_in),
99 Some(fan_out),
100 device,
101 ));
102 }
103
104 Conv2d {
105 weight,
106 bias,
107 stride: self.stride,
108 kernel_size: self.kernel_size,
109 dilation: self.dilation,
110 padding: Ignored(self.padding.clone()),
111 groups: self.groups,
112 }
113 }
114}
115
116impl<B: Backend> ModuleDisplay for Conv2d<B> {
117 fn custom_settings(&self) -> Option<DisplaySettings> {
118 DisplaySettings::new()
119 .with_new_line_after_attribute(false)
120 .optional()
121 }
122
123 fn custom_content(&self, content: Content) -> Option<Content> {
124 let padding_formatted = format!("{}", &self.padding);
126
127 let stride = format!("{:?}", self.stride);
129 let kernel_size = format!("{:?}", self.kernel_size);
130 let dilation = format!("{:?}", self.dilation);
131 let [channels_out, group_channels_in, _, _] = self.weight.dims();
132 let channels_in = group_channels_in * self.groups;
133 let ch_out = format!("{:?}", channels_out);
134 let ch_in = format!("{:?}", channels_in);
135 content
136 .add("ch_in", &ch_in)
137 .add("ch_out", &ch_out)
138 .add("stride", &stride)
139 .add("kernel_size", &kernel_size)
140 .add("dilation", &dilation)
141 .add("groups", &self.groups)
142 .add("padding", &padding_formatted)
143 .optional()
144 }
145}
146
147impl<B: Backend> Conv2d<B> {
148 pub fn forward(&self, input: Tensor<B, 4>) -> Tensor<B, 4> {
171 let [_batch_size, _channels_in, height_in, width_in] = input.dims();
172 let padding =
173 self.padding
174 .calculate_padding_2d(height_in, width_in, &self.kernel_size, &self.stride);
175 conv2d(
176 input,
177 self.weight.val(),
178 self.bias.as_ref().map(|bias| bias.val()),
179 ConvOptions::new(self.stride, padding, self.dilation, self.groups),
180 )
181 }
182}
183
184#[cfg(test)]
185mod tests {
186 use burn::tensor::ops::FloatElem;
187 use burn::tensor::{ElementConversion, Tolerance};
188
189 use super::*;
190 use crate::TestBackend;
191 use burn::tensor::TensorData;
192 type FT = FloatElem<TestBackend>; #[test]
195 fn initializer_default() {
196 let device = Default::default();
197 TestBackend::seed(&device, 0);
198
199 let config = Conv2dConfig::new([5, 1], [5, 5]);
200 let k = (config.channels[0] * config.kernel_size[0] * config.kernel_size[1]) as f64;
201 let k = (config.groups as f64 / k).sqrt().elem::<FT>();
202 let conv = config.init::<TestBackend>(&device);
203
204 conv.weight.to_data().assert_within_range(-k..k);
205 }
206
207 #[test]
208 fn initializer_zeros() {
209 let device = Default::default();
210 TestBackend::seed(&device, 0);
211
212 let config = Conv2dConfig::new([5, 2], [5, 5]).with_initializer(Initializer::Zeros);
213 let conv = config.init::<TestBackend>(&device);
214
215 assert_eq!(config.initializer, Initializer::Zeros);
216 conv.weight.to_data().assert_approx_eq::<FT>(
217 &TensorData::zeros::<FT, _>(conv.weight.shape()),
218 Tolerance::default(),
219 );
220 }
221
222 #[test]
223 fn initializer_fan_out() {
224 let device = Default::default();
225 TestBackend::seed(&device, 0);
226
227 let init = Initializer::KaimingUniform {
228 gain: 1.0 / 3.0f64.sqrt(),
229 fan_out_only: true, };
231
232 let config = Conv2dConfig::new([5, 1], [5, 5]).with_initializer(init.clone());
233 let _ = config.init::<TestBackend>(&device);
234
235 assert_eq!(config.initializer, init);
236 }
237
238 #[test]
239 fn initializer_fan_with_groups_is_valid() {
240 let device = Default::default();
241 TestBackend::seed(&device, 0);
242
243 let init = Initializer::KaimingUniform {
244 gain: 1.0 / 3.0f64.sqrt(),
245 fan_out_only: true,
246 };
247
248 let config = Conv2dConfig::new([4, 4], [1, 1])
249 .with_initializer(init.clone())
250 .with_groups(4);
251 let _ = config.init::<TestBackend>(&device);
252
253 assert_eq!(config.initializer, init);
254 }
255
256 #[test]
257 #[should_panic = "Both channels must be divisible by the number of groups."]
258 fn channels_with_groups_is_invalid() {
259 let device = Default::default();
260 let config = Conv2dConfig::new([1, 4], [1, 1]).with_groups(4);
261 let _ = config.init::<TestBackend>(&device);
262 }
263
264 #[test]
265 #[should_panic = "Same padding with an even kernel size is not supported"]
266 fn same_with_even_kernel_is_invalid() {
267 let device = Default::default();
268 let config = Conv2dConfig::new([4, 4], [2, 2]).with_padding(PaddingConfig2d::Same);
269 let _ = config.init::<TestBackend>(&device);
270 }
271
272 #[test]
273 fn display() {
274 let config = Conv2dConfig::new([5, 1], [5, 5]);
275 let conv = config.init::<TestBackend>(&Default::default());
276
277 assert_eq!(
278 alloc::format!("{conv}"),
279 "Conv2d {ch_in: 5, ch_out: 1, stride: [1, 1], kernel_size: [5, 5], dilation: [1, 1], groups: 1, padding: Valid, params: 126}"
280 );
281 }
282
283 #[test]
284 #[should_panic = "Number of channels in input tensor and input channels of convolution must be equal. got: 4, expected: 5"]
285 fn input_channels_mismatch() {
286 let config = Conv2dConfig::new([5, 3], [3, 3]);
287 let conv = config.init::<TestBackend>(&Default::default());
288
289 let input = Tensor::<TestBackend, 4>::zeros([1, 4, 10, 10], &Default::default());
290 let _ = conv.forward(input);
291 }
292}