| from typing import Literal, Optional |
|
|
| import torch |
| from einops import einsum, repeat |
| from jaxtyping import Float |
| from torch import Tensor |
|
|
| from .coordinate_conversion import generate_conversions |
| from .rendering import render_over_image |
| from .types import Pair, Scalar, Vector, sanitize_scalar, sanitize_vector |
|
|
|
|
| def draw_lines( |
| image: Float[Tensor, "3 height width"], |
| start: Vector, |
| end: Vector, |
| color: Vector, |
| width: Scalar, |
| cap: Literal["butt", "round", "square"] = "round", |
| num_msaa_passes: int = 1, |
| x_range: Optional[Pair] = None, |
| y_range: Optional[Pair] = None, |
| ) -> Float[Tensor, "3 height width"]: |
| device = image.device |
| start = sanitize_vector(start, 2, device) |
| end = sanitize_vector(end, 2, device) |
| color = sanitize_vector(color, 3, device) |
| width = sanitize_scalar(width, device) |
| (num_lines,) = torch.broadcast_shapes( |
| start.shape[0], |
| end.shape[0], |
| color.shape[0], |
| width.shape, |
| ) |
|
|
| |
| _, h, w = image.shape |
| world_to_pixel, _ = generate_conversions((h, w), device, x_range, y_range) |
| start = world_to_pixel(start) |
| end = world_to_pixel(end) |
|
|
| def color_function( |
| xy: Float[Tensor, "point 2"], |
| ) -> Float[Tensor, "point 4"]: |
| |
| delta = end - start |
| delta_norm = delta.norm(dim=-1, keepdim=True) |
| u_delta = delta / delta_norm |
|
|
| |
| indicator = xy - start[:, None] |
|
|
| |
| extra = 0.5 * width[:, None] if cap == "square" else 0 |
| parallel = einsum(u_delta, indicator, "l xy, l s xy -> l s") |
| parallel_inside_line = (parallel <= delta_norm + extra) & (parallel > -extra) |
|
|
| |
| perpendicular = indicator - parallel[..., None] * u_delta[:, None] |
| perpendicular_inside_line = perpendicular.norm(dim=-1) < 0.5 * width[:, None] |
|
|
| inside_line = parallel_inside_line & perpendicular_inside_line |
|
|
| |
| if cap == "round": |
| near_start = indicator.norm(dim=-1) < 0.5 * width[:, None] |
| inside_line |= near_start |
| end_indicator = indicator = xy - end[:, None] |
| near_end = end_indicator.norm(dim=-1) < 0.5 * width[:, None] |
| inside_line |= near_end |
|
|
| |
| selectable_color = color.broadcast_to((num_lines, 3)) |
| arrangement = inside_line * torch.arange(num_lines, device=device)[:, None] |
| top_color = selectable_color.gather( |
| dim=0, |
| index=repeat(arrangement.argmax(dim=0), "s -> s c", c=3), |
| ) |
| rgba = torch.cat((top_color, inside_line.any(dim=0).float()[:, None]), dim=-1) |
|
|
| return rgba |
|
|
| return render_over_image(image, color_function, device, num_passes=num_msaa_passes) |
|
|