Towards-Realtime-MOT/utils/utils.py
Parthesh Soni 24f351d1b5
Documentation (#95)
* Added documentation

* Added docstrings and comments

* Removed unused imports

* Removed unused imports

* Added functionality of saving checkpoints during training process

* Update train.py

* Update multitracker.py
2020-03-14 10:24:27 +08:00

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import glob
import random
import os
import os.path as osp
import cv2
import matplotlib.pyplot as plt
import numpy as np
import torch
import torch.nn.functional as F
from torchvision.ops import nms
def mkdir_if_missing(dir):
os.makedirs(dir, exist_ok=True)
def float3(x): # format floats to 3 decimals
return float(format(x, '.3f'))
def init_seeds(seed=0):
random.seed(seed)
np.random.seed(seed)
torch.manual_seed(seed)
torch.cuda.manual_seed(seed)
torch.cuda.manual_seed_all(seed)
def load_classes(path):
"""
Loads class labels at 'path'
"""
fp = open(path, 'r')
names = fp.read().split('\n')
return list(filter(None, names)) # filter removes empty strings (such as last line)
def model_info(model):
"""
Prints out a line-by-line description of a PyTorch model ending with a summary.
"""
n_p = sum(x.numel() for x in model.parameters()) # number parameters
n_g = sum(x.numel() for x in model.parameters() if x.requires_grad) # number gradients
print('\n%5s %50s %9s %12s %20s %12s %12s' % ('layer', 'name', 'gradient', 'parameters', 'shape', 'mu', 'sigma'))
for i, (name, p) in enumerate(model.named_parameters()):
name = name.replace('module_list.', '')
print('%5g %50s %9s %12g %20s %12.3g %12.3g' % (
i, name, p.requires_grad, p.numel(), list(p.shape), p.mean(), p.std()))
print('Model Summary: %g layers, %g parameters, %g gradients\n' % (i + 1, n_p, n_g))
def plot_one_box(x, img, color=None, label=None, line_thickness=None):
"""
Plots one bounding box on image img.
"""
tl = line_thickness or round(0.0004 * max(img.shape[0:2])) + 1 # line thickness
color = color or [random.randint(0, 255) for _ in range(3)]
c1, c2 = (int(x[0]), int(x[1])), (int(x[2]), int(x[3]))
cv2.rectangle(img, c1, c2, color, thickness=tl)
if label:
tf = max(tl - 1, 1) # font thickness
t_size = cv2.getTextSize(label, 0, fontScale=tl / 3, thickness=tf)[0]
c2 = c1[0] + t_size[0], c1[1] - t_size[1] - 3
cv2.rectangle(img, c1, c2, color, -1) # filled
cv2.putText(img, label, (c1[0], c1[1] - 2), 0, tl / 3, [225, 255, 255], thickness=tf, lineType=cv2.LINE_AA)
def weights_init_normal(m):
classname = m.__class__.__name__
if classname.find('Conv') != -1:
torch.nn.init.normal_(m.weight.data, 0.0, 0.03)
elif classname.find('BatchNorm2d') != -1:
torch.nn.init.normal_(m.weight.data, 1.0, 0.03)
torch.nn.init.constant_(m.bias.data, 0.0)
def xyxy2xywh(x):
# Convert bounding box format from [x1, y1, x2, y2] to [x, y, w, h]
# x, y are coordinates of center
# (x1, y1) and (x2, y2) are coordinates of bottom left and top right respectively.
y = torch.zeros_like(x) if x.dtype is torch.float32 else np.zeros_like(x)
y[:, 0] = (x[:, 0] + x[:, 2]) / 2 # x center
y[:, 1] = (x[:, 1] + x[:, 3]) / 2 # y center
y[:, 2] = x[:, 2] - x[:, 0] # width
y[:, 3] = x[:, 3] - x[:, 1] # height
return y
def xywh2xyxy(x):
# Convert bounding box format from [x, y, w, h] to [x1, y1, x2, y2]
# x, y are coordinates of center
# (x1, y1) and (x2, y2) are coordinates of bottom left and top right respectively.
y = torch.zeros_like(x) if x.dtype is torch.float32 else np.zeros_like(x)
y[:, 0] = (x[:, 0] - x[:, 2] / 2) # Bottom left x
y[:, 1] = (x[:, 1] - x[:, 3] / 2) # Bottom left y
y[:, 2] = (x[:, 0] + x[:, 2] / 2) # Top right x
y[:, 3] = (x[:, 1] + x[:, 3] / 2) # Top right y
return y
def scale_coords(img_size, coords, img0_shape):
# Rescale x1, y1, x2, y2 from 416 to image size
gain_w = float(img_size[0]) / img0_shape[1] # gain = old / new
gain_h = float(img_size[1]) / img0_shape[0]
gain = min(gain_w, gain_h)
pad_x = (img_size[0] - img0_shape[1] * gain) / 2 # width padding
pad_y = (img_size[1] - img0_shape[0] * gain) / 2 # height padding
coords[:, [0, 2]] -= pad_x
coords[:, [1, 3]] -= pad_y
coords[:, 0:4] /= gain
coords[:, :4] = torch.clamp(coords[:, :4], min=0)
return coords
def ap_per_class(tp, conf, pred_cls, target_cls):
""" Computes the average precision, given the recall and precision curves.
Method originally from https://github.com/rafaelpadilla/Object-Detection-Metrics.
# Arguments
tp: True positives (list).
conf: Objectness value from 0-1 (list).
pred_cls: Predicted object classes (list).
target_cls: True object classes (list).
# Returns
The average precision as computed in py-faster-rcnn.
"""
# lists/pytorch to numpy
tp, conf, pred_cls, target_cls = np.array(tp), np.array(conf), np.array(pred_cls), np.array(target_cls)
# Sort by objectness
i = np.argsort(-conf)
tp, conf, pred_cls = tp[i], conf[i], pred_cls[i]
# Find unique classes
unique_classes = np.unique(np.concatenate((pred_cls, target_cls), 0))
# Create Precision-Recall curve and compute AP for each class
ap, p, r = [], [], []
for c in unique_classes:
i = pred_cls == c
n_gt = sum(target_cls == c) # Number of ground truth objects
n_p = sum(i) # Number of predicted objects
if (n_p == 0) and (n_gt == 0):
continue
elif (n_p == 0) or (n_gt == 0):
ap.append(0)
r.append(0)
p.append(0)
else:
# Accumulate FPs and TPs
fpc = np.cumsum(1 - tp[i])
tpc = np.cumsum(tp[i])
# Recall
recall_curve = tpc / (n_gt + 1e-16)
r.append(tpc[-1] / (n_gt + 1e-16))
# Precision
precision_curve = tpc / (tpc + fpc)
p.append(tpc[-1] / (tpc[-1] + fpc[-1]))
# AP from recall-precision curve
ap.append(compute_ap(recall_curve, precision_curve))
return np.array(ap), unique_classes.astype('int32'), np.array(r), np.array(p)
def compute_ap(recall, precision):
""" Computes the average precision, given the recall and precision curves.
Code originally from https://github.com/rbgirshick/py-faster-rcnn.
# Arguments
recall: The recall curve (list).
precision: The precision curve (list).
# Returns
The average precision as computed in py-faster-rcnn.
"""
# correct AP calculation
# first append sentinel values at the end
mrec = np.concatenate(([0.], recall, [1.]))
mpre = np.concatenate(([0.], precision, [0.]))
# compute the precision envelope
for i in range(mpre.size - 1, 0, -1):
mpre[i - 1] = np.maximum(mpre[i - 1], mpre[i])
# to calculate area under PR curve, look for points
# where X axis (recall) changes value
i = np.where(mrec[1:] != mrec[:-1])[0]
# and sum (\Delta recall) * prec
ap = np.sum((mrec[i + 1] - mrec[i]) * mpre[i + 1])
return ap
def bbox_iou(box1, box2, x1y1x2y2=False):
"""
Returns the IoU of two bounding boxes
"""
N, M = len(box1), len(box2)
if x1y1x2y2:
# Get the coordinates of bounding boxes
b1_x1, b1_y1, b1_x2, b1_y2 = box1[:, 0], box1[:, 1], box1[:, 2], box1[:, 3]
b2_x1, b2_y1, b2_x2, b2_y2 = box2[:, 0], box2[:, 1], box2[:, 2], box2[:, 3]
else:
# Transform from center and width to exact coordinates
b1_x1, b1_x2 = box1[:, 0] - box1[:, 2] / 2, box1[:, 0] + box1[:, 2] / 2
b1_y1, b1_y2 = box1[:, 1] - box1[:, 3] / 2, box1[:, 1] + box1[:, 3] / 2
b2_x1, b2_x2 = box2[:, 0] - box2[:, 2] / 2, box2[:, 0] + box2[:, 2] / 2
b2_y1, b2_y2 = box2[:, 1] - box2[:, 3] / 2, box2[:, 1] + box2[:, 3] / 2
# get the coordinates of the intersection rectangle
inter_rect_x1 = torch.max(b1_x1.unsqueeze(1), b2_x1)
inter_rect_y1 = torch.max(b1_y1.unsqueeze(1), b2_y1)
inter_rect_x2 = torch.min(b1_x2.unsqueeze(1), b2_x2)
inter_rect_y2 = torch.min(b1_y2.unsqueeze(1), b2_y2)
# Intersection area
inter_area = torch.clamp(inter_rect_x2 - inter_rect_x1, 0) * torch.clamp(inter_rect_y2 - inter_rect_y1, 0)
# Union Area
b1_area = ((b1_x2 - b1_x1) * (b1_y2 - b1_y1))
b1_area = ((b1_x2 - b1_x1) * (b1_y2 - b1_y1)).view(-1,1).expand(N,M)
b2_area = ((b2_x2 - b2_x1) * (b2_y2 - b2_y1)).view(1,-1).expand(N,M)
return inter_area / (b1_area + b2_area - inter_area + 1e-16)
def build_targets_max(target, anchor_wh, nA, nC, nGh, nGw):
"""
returns nT, nCorrect, tx, ty, tw, th, tconf, tcls
"""
nB = len(target) # number of images in batch
txy = torch.zeros(nB, nA, nGh, nGw, 2).cuda() # batch size, anchors, grid size
twh = torch.zeros(nB, nA, nGh, nGw, 2).cuda()
tconf = torch.LongTensor(nB, nA, nGh, nGw).fill_(0).cuda()
tcls = torch.ByteTensor(nB, nA, nGh, nGw, nC).fill_(0).cuda() # nC = number of classes
tid = torch.LongTensor(nB, nA, nGh, nGw, 1).fill_(-1).cuda()
for b in range(nB):
t = target[b]
t_id = t[:, 1].clone().long().cuda()
t = t[:,[0,2,3,4,5]]
nTb = len(t) # number of targets
if nTb == 0:
continue
#gxy, gwh = t[:, 1:3] * nG, t[:, 3:5] * nG
gxy, gwh = t[: , 1:3].clone() , t[:, 3:5].clone()
gxy[:, 0] = gxy[:, 0] * nGw
gxy[:, 1] = gxy[:, 1] * nGh
gwh[:, 0] = gwh[:, 0] * nGw
gwh[:, 1] = gwh[:, 1] * nGh
gi = torch.clamp(gxy[:, 0], min=0, max=nGw -1).long()
gj = torch.clamp(gxy[:, 1], min=0, max=nGh -1).long()
# Get grid box indices and prevent overflows (i.e. 13.01 on 13 anchors)
#gi, gj = torch.clamp(gxy.long(), min=0, max=nG - 1).t()
#gi, gj = gxy.long().t()
# iou of targets-anchors (using wh only)
box1 = gwh
box2 = anchor_wh.unsqueeze(1)
inter_area = torch.min(box1, box2).prod(2)
iou = inter_area / (box1.prod(1) + box2.prod(2) - inter_area + 1e-16)
# Select best iou_pred and anchor
iou_best, a = iou.max(0) # best anchor [0-2] for each target
# Select best unique target-anchor combinations
if nTb > 1:
_, iou_order = torch.sort(-iou_best) # best to worst
# Unique anchor selection
u = torch.stack((gi, gj, a), 0)[:, iou_order]
# _, first_unique = np.unique(u, axis=1, return_index=True) # first unique indices
first_unique = return_torch_unique_index(u, torch.unique(u, dim=1)) # torch alternative
i = iou_order[first_unique]
# best anchor must share significant commonality (iou) with target
i = i[iou_best[i] > 0.60] # TODO: examine arbitrary threshold
if len(i) == 0:
continue
a, gj, gi, t = a[i], gj[i], gi[i], t[i]
t_id = t_id[i]
if len(t.shape) == 1:
t = t.view(1, 5)
else:
if iou_best < 0.60:
continue
tc, gxy, gwh = t[:, 0].long(), t[:, 1:3].clone(), t[:, 3:5].clone()
gxy[:, 0] = gxy[:, 0] * nGw
gxy[:, 1] = gxy[:, 1] * nGh
gwh[:, 0] = gwh[:, 0] * nGw
gwh[:, 1] = gwh[:, 1] * nGh
# XY coordinates
txy[b, a, gj, gi] = gxy - gxy.floor()
# Width and height
twh[b, a, gj, gi] = torch.log(gwh / anchor_wh[a]) # yolo method
# twh[b, a, gj, gi] = torch.sqrt(gwh / anchor_wh[a]) / 2 # power method
# One-hot encoding of label
tcls[b, a, gj, gi, tc] = 1
tconf[b, a, gj, gi] = 1
tid[b, a, gj, gi] = t_id.unsqueeze(1)
tbox = torch.cat([txy, twh], -1)
return tconf, tbox, tid
def build_targets_thres(target, anchor_wh, nA, nC, nGh, nGw):
ID_THRESH = 0.5
FG_THRESH = 0.5
BG_THRESH = 0.4
nB = len(target) # number of images in batch
assert(len(anchor_wh)==nA)
tbox = torch.zeros(nB, nA, nGh, nGw, 4).cuda() # batch size, anchors, grid size
tconf = torch.LongTensor(nB, nA, nGh, nGw).fill_(0).cuda()
tid = torch.LongTensor(nB, nA, nGh, nGw, 1).fill_(-1).cuda()
for b in range(nB):
t = target[b]
t_id = t[:, 1].clone().long().cuda()
t = t[:,[0,2,3,4,5]]
nTb = len(t) # number of targets
if nTb == 0:
continue
gxy, gwh = t[: , 1:3].clone() , t[:, 3:5].clone()
gxy[:, 0] = gxy[:, 0] * nGw
gxy[:, 1] = gxy[:, 1] * nGh
gwh[:, 0] = gwh[:, 0] * nGw
gwh[:, 1] = gwh[:, 1] * nGh
gxy[:, 0] = torch.clamp(gxy[:, 0], min=0, max=nGw -1)
gxy[:, 1] = torch.clamp(gxy[:, 1], min=0, max=nGh -1)
gt_boxes = torch.cat([gxy, gwh], dim=1) # Shape Ngx4 (xc, yc, w, h)
anchor_mesh = generate_anchor(nGh, nGw, anchor_wh)
anchor_list = anchor_mesh.permute(0,2,3,1).contiguous().view(-1, 4) # Shpae (nA x nGh x nGw) x 4
#print(anchor_list.shape, gt_boxes.shape)
iou_pdist = bbox_iou(anchor_list, gt_boxes) # Shape (nA x nGh x nGw) x Ng
iou_max, max_gt_index = torch.max(iou_pdist, dim=1) # Shape (nA x nGh x nGw), both
iou_map = iou_max.view(nA, nGh, nGw)
gt_index_map = max_gt_index.view(nA, nGh, nGw)
#nms_map = pooling_nms(iou_map, 3)
id_index = iou_map > ID_THRESH
fg_index = iou_map > FG_THRESH
bg_index = iou_map < BG_THRESH
ign_index = (iou_map < FG_THRESH) * (iou_map > BG_THRESH)
tconf[b][fg_index] = 1
tconf[b][bg_index] = 0
tconf[b][ign_index] = -1
gt_index = gt_index_map[fg_index]
gt_box_list = gt_boxes[gt_index]
gt_id_list = t_id[gt_index_map[id_index]]
#print(gt_index.shape, gt_index_map[id_index].shape, gt_boxes.shape)
if torch.sum(fg_index) > 0:
tid[b][id_index] = gt_id_list.unsqueeze(1)
fg_anchor_list = anchor_list.view(nA, nGh, nGw, 4)[fg_index]
delta_target = encode_delta(gt_box_list, fg_anchor_list)
tbox[b][fg_index] = delta_target
return tconf, tbox, tid
def generate_anchor(nGh, nGw, anchor_wh):
nA = len(anchor_wh)
yy, xx =torch.meshgrid(torch.arange(nGh), torch.arange(nGw))
xx, yy = xx.cuda(), yy.cuda()
mesh = torch.stack([xx, yy], dim=0) # Shape 2, nGh, nGw
mesh = mesh.unsqueeze(0).repeat(nA,1,1,1).float() # Shape nA x 2 x nGh x nGw
anchor_offset_mesh = anchor_wh.unsqueeze(-1).unsqueeze(-1).repeat(1, 1, nGh,nGw) # Shape nA x 2 x nGh x nGw
anchor_mesh = torch.cat([mesh, anchor_offset_mesh], dim=1) # Shape nA x 4 x nGh x nGw
return anchor_mesh
def encode_delta(gt_box_list, fg_anchor_list):
px, py, pw, ph = fg_anchor_list[:, 0], fg_anchor_list[:,1], \
fg_anchor_list[:, 2], fg_anchor_list[:,3]
gx, gy, gw, gh = gt_box_list[:, 0], gt_box_list[:, 1], \
gt_box_list[:, 2], gt_box_list[:, 3]
dx = (gx - px) / pw
dy = (gy - py) / ph
dw = torch.log(gw/pw)
dh = torch.log(gh/ph)
return torch.stack([dx, dy, dw, dh], dim=1)
def decode_delta(delta, fg_anchor_list):
px, py, pw, ph = fg_anchor_list[:, 0], fg_anchor_list[:,1], \
fg_anchor_list[:, 2], fg_anchor_list[:,3]
dx, dy, dw, dh = delta[:, 0], delta[:, 1], delta[:, 2], delta[:, 3]
gx = pw * dx + px
gy = ph * dy + py
gw = pw * torch.exp(dw)
gh = ph * torch.exp(dh)
return torch.stack([gx, gy, gw, gh], dim=1)
def decode_delta_map(delta_map, anchors):
'''
:param: delta_map, shape (nB, nA, nGh, nGw, 4)
:param: anchors, shape (nA,4)
'''
nB, nA, nGh, nGw, _ = delta_map.shape
anchor_mesh = generate_anchor(nGh, nGw, anchors)
anchor_mesh = anchor_mesh.permute(0,2,3,1).contiguous() # Shpae (nA x nGh x nGw) x 4
anchor_mesh = anchor_mesh.unsqueeze(0).repeat(nB,1,1,1,1)
pred_list = decode_delta(delta_map.view(-1,4), anchor_mesh.view(-1,4))
pred_map = pred_list.view(nB, nA, nGh, nGw, 4)
return pred_map
def pooling_nms(heatmap, kernel=1):
pad = (kernel -1 ) // 2
hmax = F.max_pool2d(heatmap, (kernel, kernel), stride=1, padding=pad)
keep = (hmax == heatmap).float()
return keep * heatmap
def non_max_suppression(prediction, conf_thres=0.5, nms_thres=0.4, method='standard'):
"""
Removes detections with lower object confidence score than 'conf_thres'
Non-Maximum Suppression to further filter detections.
Returns detections with shape:
(x1, y1, x2, y2, object_conf, class_score, class_pred)
Args:
prediction,
conf_thres,
nms_thres,
method = 'standard' or 'fast'
"""
output = [None for _ in range(len(prediction))]
for image_i, pred in enumerate(prediction):
# Filter out confidence scores below threshold
# Get score and class with highest confidence
v = pred[:, 4] > conf_thres
v = v.nonzero().squeeze()
if len(v.shape) == 0:
v = v.unsqueeze(0)
pred = pred[v]
# If none are remaining => process next image
nP = pred.shape[0]
if not nP:
continue
# From (center x, center y, width, height) to (x1, y1, x2, y2)
pred[:, :4] = xywh2xyxy(pred[:, :4])
# Non-maximum suppression
if method == 'standard':
nms_indices = nms(pred[:, :4], pred[:, 4], nms_thres)
elif method == 'fast':
nms_indices = fast_nms(pred[:, :4], pred[:, 4], iou_thres=nms_thres, conf_thres=conf_thres)
else:
raise ValueError('Invalid NMS type!')
det_max = pred[nms_indices]
if len(det_max) > 0:
# Add max detections to outputs
output[image_i] = det_max if output[image_i] is None else torch.cat((output[image_i], det_max))
return output
def fast_nms(boxes, scores, iou_thres:float=0.5, top_k:int=200, second_threshold:bool=False, conf_thres:float=0.5):
'''
Vectorized, approximated, fast NMS, adopted from YOLACT:
https://github.com/dbolya/yolact/blob/master/layers/functions/detection.py
The original version is for multi-class NMS, here we simplify the code for single-class NMS
'''
scores, idx = scores.sort(0, descending=True)
idx = idx[:top_k].contiguous()
scores = scores[:top_k]
num_dets = idx.size()
boxes = boxes[idx, :]
iou = jaccard(boxes, boxes)
iou.triu_(diagonal=1)
iou_max, _ = iou.max(dim=0)
keep = (iou_max <= iou_thres)
if second_threshold:
keep *= (scores > self.conf_thresh)
return idx[keep]
@torch.jit.script
def intersect(box_a, box_b):
""" We resize both tensors to [A,B,2] without new malloc:
[A,2] -> [A,1,2] -> [A,B,2]
[B,2] -> [1,B,2] -> [A,B,2]
Then we compute the area of intersect between box_a and box_b.
Args:
box_a: (tensor) bounding boxes, Shape: [n,A,4].
box_b: (tensor) bounding boxes, Shape: [n,B,4].
Return:
(tensor) intersection area, Shape: [n,A,B].
"""
n = box_a.size(0)
A = box_a.size(1)
B = box_b.size(1)
max_xy = torch.min(box_a[:, :, 2:].unsqueeze(2).expand(n, A, B, 2),
box_b[:, :, 2:].unsqueeze(1).expand(n, A, B, 2))
min_xy = torch.max(box_a[:, :, :2].unsqueeze(2).expand(n, A, B, 2),
box_b[:, :, :2].unsqueeze(1).expand(n, A, B, 2))
inter = torch.clamp((max_xy - min_xy), min=0)
return inter[:, :, :, 0] * inter[:, :, :, 1]
def jaccard(box_a, box_b, iscrowd:bool=False):
"""Compute the jaccard overlap of two sets of boxes. The jaccard overlap
is simply the intersection over union of two boxes. Here we operate on
ground truth boxes and default boxes. If iscrowd=True, put the crowd in box_b.
E.g.:
A ∩ B / A B = A ∩ B / (area(A) + area(B) - A ∩ B)
Args:
box_a: (tensor) Ground truth bounding boxes, Shape: [num_objects,4]
box_b: (tensor) Prior boxes from priorbox layers, Shape: [num_priors,4]
Return:
jaccard overlap: (tensor) Shape: [box_a.size(0), box_b.size(0)]
"""
use_batch = True
if box_a.dim() == 2:
use_batch = False
box_a = box_a[None, ...]
box_b = box_b[None, ...]
inter = intersect(box_a, box_b)
area_a = ((box_a[:, :, 2]-box_a[:, :, 0]) *
(box_a[:, :, 3]-box_a[:, :, 1])).unsqueeze(2).expand_as(inter) # [A,B]
area_b = ((box_b[:, :, 2]-box_b[:, :, 0]) *
(box_b[:, :, 3]-box_b[:, :, 1])).unsqueeze(1).expand_as(inter) # [A,B]
union = area_a + area_b - inter
out = inter / area_a if iscrowd else inter / union
return out if use_batch else out.squeeze(0)
def return_torch_unique_index(u, uv):
n = uv.shape[1] # number of columns
first_unique = torch.zeros(n, device=u.device).long()
for j in range(n):
first_unique[j] = (uv[:, j:j + 1] == u).all(0).nonzero()[0]
return first_unique
def strip_optimizer_from_checkpoint(filename='weights/best.pt'):
# Strip optimizer from *.pt files for lighter files (reduced by 2/3 size)
a = torch.load(filename, map_location='cpu')
a['optimizer'] = []
torch.save(a, filename.replace('.pt', '_lite.pt'))
def plot_results():
"""
Plot YOLO training results from the file 'results.txt'
Example of what this is trying to plot can be found at:
https://user-images.githubusercontent.com/26833433/63258271-fe9d5300-c27b-11e9-9a15-95038daf4438.png
An example results.txt file:
import os; os.system('wget https://storage.googleapis.com/ultralytics/yolov3/results_v1.txt')
"""
plt.figure(figsize=(14, 7))
s = ['X + Y', 'Width + Height', 'Confidence', 'Classification', 'Total Loss', 'mAP', 'Recall', 'Precision']
files = sorted(glob.glob('results*.txt'))
for f in files:
results = np.loadtxt(f, usecols=[2, 3, 4, 5, 6, 9, 10, 11]).T # column 11 is mAP
x = range(1, results.shape[1])
for i in range(8):
plt.subplot(2, 4, i + 1)
plt.plot(x, results[i, x], marker='.', label=f)
plt.title(s[i])
if i == 0:
plt.legend()