text stringlengths 0 93.6k |
|---|
yss_np = Yss[0].cpu().data.numpy() |
gt_ref_map = yss_np # (B, 1, h, w) |
# For every gt patch from the gt_ref_map |
for b in range(0, gt_ref_map.shape[0]): |
y_idx, x_idx = np.where(gt_ref_map[b][0] > 0) |
num_heads = y_idx.shape[0] |
if num_heads > 1: |
distances = (x_idx - x_idx[np.newaxis, :].T) ** 2 + (y_idx - y_idx[np.newaxis, :].T) ** 2 |
min_distances = np.sqrt(np.partition(distances, 1, axis=1)[:, 1]) |
min_distances = np.minimum(min_distances, np.inf) ##? WHY INF??? |
box_inds = np.digitize(min_distances, BOX_SIZE_BINS_NPY, False) |
box_inds = np.maximum(box_inds - 1, 0) # to make zero based indexing |
elif num_heads == 1: |
box_inds = np.array([BOX_SIZE_BINS_NPY.shape[0] - 1]) |
else: |
box_inds = np.array([]) |
assert(np.all(box_inds < BOX_SIZE_BINS_NPY.shape[0])) |
scale_inds = np.digitize(box_inds, SCALE_BINS_ON_BOX_SIZE_BINS, False) |
# Assign the w_maps |
check_sum = 0 |
for i, (yss, w_map) in enumerate(zip(Yss, Yss_out)): |
scale_sel_inds = (scale_inds == i) |
check_sum += np.sum(scale_sel_inds) |
if scale_sel_inds.shape[0] > 0: |
# find box index in the scale |
sel_box_inds = box_inds[scale_sel_inds] |
scale_box_inds = sel_box_inds % 3 |
heads_y = y_idx[scale_sel_inds] // PRED_DOWNSCALE_FACTORS[3-i] |
heads_x = x_idx[scale_sel_inds] // PRED_DOWNSCALE_FACTORS[3-i] |
Yss_out[i][b, scale_box_inds, heads_y, heads_x] = BOX_SIZE_BINS_NPY[sel_box_inds] |
Yss_out[i][b, 3, heads_y, heads_x] = 0 |
assert(check_sum == torch.sum(Yss[0][b]).item() == len(y_idx)) |
Yss_out = [torch.cuda.FloatTensor(w_map) for w_map in Yss_out] |
check_sum = 0 |
for yss_out in Yss_out: |
yss_out_argmax, _ = torch.max(yss_out[:, 0:3], dim=1) |
yss_out_argmax = (yss_out_argmax>0).type(torch.cuda.FloatTensor) |
check_sum += torch.sum(yss_out_argmax).item() |
yss = (Yss[0]>0).type(torch.cuda.FloatTensor) |
assert(torch.sum(yss) == check_sum) |
return Yss_out |
''' |
This function upsamples given tensor by a factor but make sures there is no repetition |
of values. Basically when upsampling by a factor of 2, there are 3 new places created. This fn. |
instead of repeating the values, marks them 1. |
Caveat : this function currently supports upsample by factor=2 only. For power of 2, use it |
multiple times. This doesn't support factors other than powers of 2 |
Input - input (torch tensor) - A binary map denoting where the head is present. (Bx4xHxW) |
factor (int) - factor by which you need to upsample |
Output - output (torch tensor) - Upsampled and non-repeated output (Bx4xH'xW') |
H' - upsampled height |
W' - upsampled width |
''' |
def upsample_single(self, input_, factor=2): |
channels = input_.size(1) |
indices = torch.nonzero(input_) |
indices_up = indices.clone() |
# Corner case! |
if indices_up.size(0) == 0: |
return torch.zeros(input_.size(0),input_.size(1), input_.size(2)*factor, input_.size(3)*factor).cuda() |
indices_up[:, 2] *= factor |
indices_up[:, 3] *= factor |
output = torch.zeros(input_.size(0),input_.size(1), input_.size(2)*factor, input_.size(3)*factor).cuda() |
output[indices_up[:, 0], indices_up[:, 1], indices_up[:, 2], indices_up[:, 3]] = input_[indices[:, 0], indices[:, 1], indices[:, 2], indices[:, 3]] |
output[indices_up[:, 0], channels-1, indices_up[:, 2]+1, indices_up[:, 3]] = 1.0 |
output[indices_up[:, 0], channels-1, indices_up[:, 2], indices_up[:, 3]+1] = 1.0 |
output[indices_up[:, 0], channels-1, indices_up[:, 2]+1, indices_up[:, 3]+1] = 1.0 |
output_check = nn.functional.max_pool2d(output, kernel_size=2) |
return output |
''' |
This function implements the GWTA loss in which it |
divides the pred and gt into grids and calculates |
loss on each grid and returns the maximum of the losses. |
input : pred (torch.cuda.FloatTensor) - Bx4xHxW - prediction from the network |
gt (torch.cuda.FloatTensor) - BxHxW - Ground truth points |
criterion - criterion to take the loss between pred and gt |
grid_factor (int) - the image would be divided in 2^grid_factor number of patches for takeing WTA loss |
output : max_loss (torch.FloatTensor) - Maximum of the grid losses |
''' |
def gwta_loss(self, pred, gt, criterion, grid_factor=2): |
Subsets and Splits
No community queries yet
The top public SQL queries from the community will appear here once available.