KN2024DockerFinal / yolov9 /models /experimental.py
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import math
import numpy as np
import torch
import torch.nn as nn
from utils.downloads import attempt_download
class Sum(nn.Module):
# Weighted sum of 2 or more layers https://arxiv.org/abs/1911.09070
def __init__(self, n, weight=False): # n: number of inputs
super().__init__()
self.weight = weight # apply weights boolean
self.iter = range(n - 1) # iter object
if weight:
self.w = nn.Parameter(-torch.arange(1.0, n) / 2, requires_grad=True) # layer weights
def forward(self, x):
y = x[0] # no weight
if self.weight:
w = torch.sigmoid(self.w) * 2
for i in self.iter:
y = y + x[i + 1] * w[i]
else:
for i in self.iter:
y = y + x[i + 1]
return y
class MixConv2d(nn.Module):
# Mixed Depth-wise Conv https://arxiv.org/abs/1907.09595
def __init__(self, c1, c2, k=(1, 3), s=1, equal_ch=True): # ch_in, ch_out, kernel, stride, ch_strategy
super().__init__()
n = len(k) # number of convolutions
if equal_ch: # equal c_ per group
i = torch.linspace(0, n - 1E-6, c2).floor() # c2 indices
c_ = [(i == g).sum() for g in range(n)] # intermediate channels
else: # equal weight.numel() per group
b = [c2] + [0] * n
a = np.eye(n + 1, n, k=-1)
a -= np.roll(a, 1, axis=1)
a *= np.array(k) ** 2
a[0] = 1
c_ = np.linalg.lstsq(a, b, rcond=None)[0].round() # solve for equal weight indices, ax = b
self.m = nn.ModuleList([
nn.Conv2d(c1, int(c_), k, s, k // 2, groups=math.gcd(c1, int(c_)), bias=False) for k, c_ in zip(k, c_)])
self.bn = nn.BatchNorm2d(c2)
self.act = nn.SiLU()
def forward(self, x):
return self.act(self.bn(torch.cat([m(x) for m in self.m], 1)))
class Ensemble(nn.ModuleList):
# Ensemble of models
def __init__(self):
super().__init__()
def forward(self, x, augment=False, profile=False, visualize=False):
y = [module(x, augment, profile, visualize)[0] for module in self]
# y = torch.stack(y).max(0)[0] # max ensemble
# y = torch.stack(y).mean(0) # mean ensemble
y = torch.cat(y, 1) # nms ensemble
return y, None # inference, train output
class ORT_NMS(torch.autograd.Function):
'''ONNX-Runtime NMS operation'''
@staticmethod
def forward(ctx,
boxes,
scores,
max_output_boxes_per_class=torch.tensor([100]),
iou_threshold=torch.tensor([0.45]),
score_threshold=torch.tensor([0.25])):
device = boxes.device
batch = scores.shape[0]
num_det = random.randint(0, 100)
batches = torch.randint(0, batch, (num_det,)).sort()[0].to(device)
idxs = torch.arange(100, 100 + num_det).to(device)
zeros = torch.zeros((num_det,), dtype=torch.int64).to(device)
selected_indices = torch.cat([batches[None], zeros[None], idxs[None]], 0).T.contiguous()
selected_indices = selected_indices.to(torch.int64)
return selected_indices
@staticmethod
def symbolic(g, boxes, scores, max_output_boxes_per_class, iou_threshold, score_threshold):
return g.op("NonMaxSuppression", boxes, scores, max_output_boxes_per_class, iou_threshold, score_threshold)
class TRT_NMS(torch.autograd.Function):
'''TensorRT NMS operation'''
@staticmethod
def forward(
ctx,
boxes,
scores,
background_class=-1,
box_coding=1,
iou_threshold=0.45,
max_output_boxes=100,
plugin_version="1",
score_activation=0,
score_threshold=0.25,
):
batch_size, num_boxes, num_classes = scores.shape
num_det = torch.randint(0, max_output_boxes, (batch_size, 1), dtype=torch.int32)
det_boxes = torch.randn(batch_size, max_output_boxes, 4)
det_scores = torch.randn(batch_size, max_output_boxes)
det_classes = torch.randint(0, num_classes, (batch_size, max_output_boxes), dtype=torch.int32)
return num_det, det_boxes, det_scores, det_classes
@staticmethod
def symbolic(g,
boxes,
scores,
background_class=-1,
box_coding=1,
iou_threshold=0.45,
max_output_boxes=100,
plugin_version="1",
score_activation=0,
score_threshold=0.25):
out = g.op("TRT::EfficientNMS_TRT",
boxes,
scores,
background_class_i=background_class,
box_coding_i=box_coding,
iou_threshold_f=iou_threshold,
max_output_boxes_i=max_output_boxes,
plugin_version_s=plugin_version,
score_activation_i=score_activation,
score_threshold_f=score_threshold,
outputs=4)
nums, boxes, scores, classes = out
return nums, boxes, scores, classes
class ONNX_ORT(nn.Module):
'''onnx module with ONNX-Runtime NMS operation.'''
def __init__(self, max_obj=100, iou_thres=0.45, score_thres=0.25, max_wh=640, device=None, n_classes=80):
super().__init__()
self.device = device if device else torch.device("cpu")
self.max_obj = torch.tensor([max_obj]).to(device)
self.iou_threshold = torch.tensor([iou_thres]).to(device)
self.score_threshold = torch.tensor([score_thres]).to(device)
self.max_wh = max_wh # if max_wh != 0 : non-agnostic else : agnostic
self.convert_matrix = torch.tensor([[1, 0, 1, 0], [0, 1, 0, 1], [-0.5, 0, 0.5, 0], [0, -0.5, 0, 0.5]],
dtype=torch.float32,
device=self.device)
self.n_classes=n_classes
def forward(self, x):
## https://github.com/thaitc-hust/yolov9-tensorrt/blob/main/torch2onnx.py
## thanks https://github.com/thaitc-hust
if isinstance(x, list): ## yolov9-c.pt and yolov9-e.pt return list
x = x[1]
x = x.permute(0, 2, 1)
bboxes_x = x[..., 0:1]
bboxes_y = x[..., 1:2]
bboxes_w = x[..., 2:3]
bboxes_h = x[..., 3:4]
bboxes = torch.cat([bboxes_x, bboxes_y, bboxes_w, bboxes_h], dim = -1)
bboxes = bboxes.unsqueeze(2) # [n_batch, n_bboxes, 4] -> [n_batch, n_bboxes, 1, 4]
obj_conf = x[..., 4:]
scores = obj_conf
bboxes @= self.convert_matrix
max_score, category_id = scores.max(2, keepdim=True)
dis = category_id.float() * self.max_wh
nmsbox = bboxes + dis
max_score_tp = max_score.transpose(1, 2).contiguous()
selected_indices = ORT_NMS.apply(nmsbox, max_score_tp, self.max_obj, self.iou_threshold, self.score_threshold)
X, Y = selected_indices[:, 0], selected_indices[:, 2]
selected_boxes = bboxes[X, Y, :]
selected_categories = category_id[X, Y, :].float()
selected_scores = max_score[X, Y, :]
X = X.unsqueeze(1).float()
return torch.cat([X, selected_boxes, selected_categories, selected_scores], 1)
class ONNX_TRT(nn.Module):
'''onnx module with TensorRT NMS operation.'''
def __init__(self, max_obj=100, iou_thres=0.45, score_thres=0.25, max_wh=None ,device=None, n_classes=80):
super().__init__()
assert max_wh is None
self.device = device if device else torch.device('cpu')
self.background_class = -1,
self.box_coding = 1,
self.iou_threshold = iou_thres
self.max_obj = max_obj
self.plugin_version = '1'
self.score_activation = 0
self.score_threshold = score_thres
self.n_classes=n_classes
def forward(self, x):
## https://github.com/thaitc-hust/yolov9-tensorrt/blob/main/torch2onnx.py
## thanks https://github.com/thaitc-hust
if isinstance(x, list): ## yolov9-c.pt and yolov9-e.pt return list
x = x[1]
x = x.permute(0, 2, 1)
bboxes_x = x[..., 0:1]
bboxes_y = x[..., 1:2]
bboxes_w = x[..., 2:3]
bboxes_h = x[..., 3:4]
bboxes = torch.cat([bboxes_x, bboxes_y, bboxes_w, bboxes_h], dim = -1)
bboxes = bboxes.unsqueeze(2) # [n_batch, n_bboxes, 4] -> [n_batch, n_bboxes, 1, 4]
obj_conf = x[..., 4:]
scores = obj_conf
num_det, det_boxes, det_scores, det_classes = TRT_NMS.apply(bboxes, scores, self.background_class, self.box_coding,
self.iou_threshold, self.max_obj,
self.plugin_version, self.score_activation,
self.score_threshold)
return num_det, det_boxes, det_scores, det_classes
class End2End(nn.Module):
'''export onnx or tensorrt model with NMS operation.'''
def __init__(self, model, max_obj=100, iou_thres=0.45, score_thres=0.25, max_wh=None, device=None, n_classes=80):
super().__init__()
device = device if device else torch.device('cpu')
assert isinstance(max_wh,(int)) or max_wh is None
self.model = model.to(device)
self.model.model[-1].end2end = True
self.patch_model = ONNX_TRT if max_wh is None else ONNX_ORT
self.end2end = self.patch_model(max_obj, iou_thres, score_thres, max_wh, device, n_classes)
self.end2end.eval()
def forward(self, x):
x = self.model(x)
x = self.end2end(x)
return x
def attempt_load(weights, device=None, inplace=True, fuse=True):
# Loads an ensemble of models weights=[a,b,c] or a single model weights=[a] or weights=a
from models.yolo import Detect, Model
model = Ensemble()
for w in weights if isinstance(weights, list) else [weights]:
ckpt = torch.load(attempt_download(w), map_location='cpu') # load
ckpt = (ckpt.get('ema') or ckpt['model']).to(device).float() # FP32 model
# Model compatibility updates
if not hasattr(ckpt, 'stride'):
ckpt.stride = torch.tensor([32.])
if hasattr(ckpt, 'names') and isinstance(ckpt.names, (list, tuple)):
ckpt.names = dict(enumerate(ckpt.names)) # convert to dict
model.append(ckpt.fuse().eval() if fuse and hasattr(ckpt, 'fuse') else ckpt.eval()) # model in eval mode
# Module compatibility updates
for m in model.modules():
t = type(m)
if t in (nn.Hardswish, nn.LeakyReLU, nn.ReLU, nn.ReLU6, nn.SiLU, Detect, Model):
m.inplace = inplace # torch 1.7.0 compatibility
# if t is Detect and not isinstance(m.anchor_grid, list):
# delattr(m, 'anchor_grid')
# setattr(m, 'anchor_grid', [torch.zeros(1)] * m.nl)
elif t is nn.Upsample and not hasattr(m, 'recompute_scale_factor'):
m.recompute_scale_factor = None # torch 1.11.0 compatibility
# Return model
if len(model) == 1:
return model[-1]
# Return detection ensemble
print(f'Ensemble created with {weights}\n')
for k in 'names', 'nc', 'yaml':
setattr(model, k, getattr(model[0], k))
model.stride = model[torch.argmax(torch.tensor([m.stride.max() for m in model])).int()].stride # max stride
assert all(model[0].nc == m.nc for m in model), f'Models have different class counts: {[m.nc for m in model]}'
return model