r""" Conovlutional Hough matching layers """ import torch.nn as nn import torch from .base.correlation import Correlation from .base.geometry import Geometry from .base.chm import CHM4d, CHM6d class CHMLearner(nn.Module): def __init__(self, ktype, feat_dim): super(CHMLearner, self).__init__() # Scale-wise feature transformation self.scales = [0.5, 1, 2] self.conv2ds = nn.ModuleList([nn.Conv2d(feat_dim, feat_dim // 4, kernel_size=3, padding=1, bias=False) for _ in self.scales]) # CHM layers ksz_translation = 5 ksz_scale = 3 self.chm6d = CHM6d(1, 1, ksz_scale, ksz_translation, ktype) self.chm4d = CHM4d(1, 1, ksz_translation, ktype, bias=True) # Activations self.relu = nn.ReLU(inplace=True) self.sigmoid = nn.Sigmoid() self.softplus = nn.Softplus() def forward(self, src_feat, trg_feat): corr = Correlation.build_correlation6d(src_feat, trg_feat, self.scales, self.conv2ds).unsqueeze(1) bsz, ch, s, s, h, w, h, w = corr.size() # CHM layer (6D) corr = self.chm6d(corr) corr = self.sigmoid(corr) # Scale-space maxpool corr = corr.view(bsz, -1, h, w, h, w).max(dim=1)[0] corr = Geometry.interpolate4d(corr, [h * 2, w * 2]).unsqueeze(1) # CHM layer (4D) corr = self.chm4d(corr).squeeze(1) # To ensure non-negative vote scores & soft cyclic constraints corr = self.softplus(corr) corr = Correlation.mutual_nn_filter(corr.view(bsz, corr.size(-1) ** 2, corr.size(-1) ** 2).contiguous()) return corr