当前位置: 首页 > news >正文

滨江网站开发如何查看网站权重

滨江网站开发,如何查看网站权重,湖南长沙招聘信息最新招聘2022,网站建设鼠标移动变颜色这次比赛的目标是检测美式橄榄球NFL比赛中球员经历的外部接触。您将使用视频和球员追踪数据来识别发生接触的时刻,以帮助提高球员的安全。两种接触,一种是人与人的,另一种是人与地面,不包括脚底和地面的,跟我之前做的这…

这次比赛的目标是检测美式橄榄球NFL比赛中球员经历的外部接触。您将使用视频和球员追踪数据来识别发生接触的时刻,以帮助提高球员的安全。两种接触,一种是人与人的,另一种是人与地面,不包括脚底和地面的,跟我之前做的这个是同一个主办方举行的

kaggle视频追踪NFL Health & Safety - Helmet Assignment-CSDN博客

之前做的是视频追踪,用的deepsort,这一场比赛用的2.5DCNN。

EDA部分

eda可以参考这一个notebook,用的fasteda,挺方便的

NFL Player Contact Detection EDA 🏈 | Kaggle

视频数据在test和train文件夹里面,还提供了这一个train_baseline_helmets.csv,是由上一次比赛的冠军方案产生的,是我之前做的视频追踪,train_player_tracking.csv 的频率是10HZ,视频是59.94HZ,之后要进行转换,snap 事件也就是比赛开始发生在视频的第五秒

train_labels.csv

  • step: A number representing each each timestep for each play, starting at 0 at the moment of the play starting, and incrementing by 1 every 0.1 seconds.
  • 之前说的比赛第5秒开始,一个step是0.1秒

接触发生以10HZ记录

[train/test]_player_tracking.csv

  • datetime: timestamp at 10 Hz.

[train/test]_video_metadata.csv

be used to sync with player tracking data.和视频是同步的

训练部分

我自己租卡跑,20多个小时,10个epoch,我上传到kaggle,链接如下

track_weight | Kaggle

额外要用的一个数据集如下,我用的的4090显卡20核跑的,你要自己训练的话要自己修改一下

timm-0.6.9 | Kaggle

导入包

import os
import sys
import glob
import numpy as np
import pandas as pd
import random
import math
import gc
import cv2
from tqdm import tqdm
import time
from functools import lru_cache
import torch
from torch import nn
from torch.nn import functional as F
from torch.utils.data import Dataset, DataLoader
from torch.cuda.amp import autocast, GradScaler
import timm
import albumentations as A
from albumentations.pytorch import ToTensorV2
import matplotlib.pyplot as plt
from sklearn.model_selection import train_test_split
from timm.scheduler import CosineLRScheduler
sys.path.append('../input/timm-0-6-9/pytorch-image-models-master')

配置

CFG = {'seed': 42,'model': 'convnext_small.fb_in1k','img_size': 256,'epochs': 10,'train_bs': 48, 'valid_bs': 32,'lr': 1e-3, 'weight_decay': 1e-6,'num_workers': 20,'max_grad_norm' : 1000,'epochs_warmup' : 3.0
}

我用的convnext,这个网络是原本的cnn根据vit模型去反复修改的,有兴趣自己去找论文看,但论文也就是在那反复调

设置种子和device

def seed_everything(seed):random.seed(seed)os.environ['PYTHONHASHSEED'] = str(seed)np.random.seed(seed)torch.manual_seed(seed)torch.cuda.manual_seed(seed)torch.cuda.manual_seed_all(seed)torch.backends.cudnn.deterministic = Truetorch.backends.cudnn.benchmark = Falseseed_everything(CFG['seed'])
device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')

添加一些额外的列和读取数据

def expand_contact_id(df):"""Splits out contact_id into seperate columns."""df["game_play"] = df["contact_id"].str[:12]df["step"] = df["contact_id"].str.split("_").str[-3].astype("int")df["nfl_player_id_1"] = df["contact_id"].str.split("_").str[-2]df["nfl_player_id_2"] = df["contact_id"].str.split("_").str[-1]return df
labels = expand_contact_id(pd.read_csv("../input/nfl-player-contact-detection/train_labels.csv"))
train_tracking = pd.read_csv("../input/nfl-player-contact-detection/train_player_tracking.csv")
train_helmets = pd.read_csv("../input/nfl-player-contact-detection/train_baseline_helmets.csv")
train_video_metadata = pd.read_csv("../input/nfl-player-contact-detection/train_video_metadata.csv")

将视频数据转化为图像数据

import subprocess
from tqdm import tqdm# 假设 train_helmets 是一个包含视频文件名的 DataFrame
for video in tqdm(train_helmets.video.unique()):if 'Endzone2' not in video:# 输入视频路径input_path = f'/openbayes/home/train/{video}'# 输出帧路径output_path = f'/openbayes/train/frames/{video}_%04d.jpg'# 构建 ffmpeg 命令command = ['ffmpeg','-i', input_path,  # 输入视频文件'-q:v', '5',       # 设置输出图像质量'-f', 'image2',    # 输出为图像序列output_path,       # 输出图像路径'-hide_banner',    # 隐藏 ffmpeg 的 banner 信息'-loglevel', 'error'  # 只显示错误日志]# 执行命令subprocess.run(command, check=True)

可以自己修改那里的质量,在kaggle上不能训练,要你自己租卡才跑的动

创建一些特征

def create_features(df, tr_tracking, merge_col="step", use_cols=["x_position", "y_position"]):output_cols = []df_combo = (df.astype({"nfl_player_id_1": "str"}).merge(tr_tracking.astype({"nfl_player_id": "str"})[["game_play", merge_col, "nfl_player_id",] + use_cols],left_on=["game_play", merge_col, "nfl_player_id_1"],right_on=["game_play", merge_col, "nfl_player_id"],how="left",).rename(columns={c: c+"_1" for c in use_cols}).drop("nfl_player_id", axis=1).merge(tr_tracking.astype({"nfl_player_id": "str"})[["game_play", merge_col, "nfl_player_id"] + use_cols],left_on=["game_play", merge_col, "nfl_player_id_2"],right_on=["game_play", merge_col, "nfl_player_id"],how="left",).drop("nfl_player_id", axis=1).rename(columns={c: c+"_2" for c in use_cols}).sort_values(["game_play", merge_col, "nfl_player_id_1", "nfl_player_id_2"]).reset_index(drop=True))output_cols += [c+"_1" for c in use_cols]output_cols += [c+"_2" for c in use_cols]if ("x_position" in use_cols) & ("y_position" in use_cols):index = df_combo['x_position_2'].notnull()distance_arr = np.full(len(index), np.nan)tmp_distance_arr = np.sqrt(np.square(df_combo.loc[index, "x_position_1"] - df_combo.loc[index, "x_position_2"])+ np.square(df_combo.loc[index, "y_position_1"]- df_combo.loc[index, "y_position_2"]))distance_arr[index] = tmp_distance_arrdf_combo['distance'] = distance_arroutput_cols += ["distance"]df_combo['G_flug'] = (df_combo['nfl_player_id_2']=="G")output_cols += ["G_flug"]return df_combo, output_colsuse_cols = ['x_position', 'y_position', 'speed', 'distance','direction', 'orientation', 'acceleration', 'sa'
]train, feature_cols = create_features(labels, train_tracking, use_cols=use_cols)

label和train_tracking进行合并,这里的feature_cols后面训练要用到

和视频的频率进行同步,过滤一部分数据

train_filtered = train.query('not distance>2').reset_index(drop=True)
train_filtered['frame'] = (train_filtered['step']/10*59.94+5*59.94).astype('int')+1
train_filtered.head()

视频频率是59.94,而数据集是10,这里将距离过大的pair去除

数据增强

train_aug = A.Compose([A.HorizontalFlip(p=0.5),A.ShiftScaleRotate(p=0.5),A.RandomBrightnessContrast(brightness_limit=(-0.1, 0.1), contrast_limit=(-0.1, 0.1), p=0.5),A.Normalize(mean=[0.], std=[1.]),ToTensorV2()
])valid_aug = A.Compose([A.Normalize(mean=[0.], std=[1.]),ToTensorV2()
])

创建字典

video2helmets = {}
train_helmets_new = train_helmets.set_index('video')
for video in tqdm(train_helmets.video.unique()):video2helmets[video] = train_helmets_new.loc[video].reset_index(drop=True)
video2frames = {}for game_play in tqdm(train_video_metadata.game_play.unique()):for view in ['Endzone', 'Sideline']:video = game_play + f'_{view}.mp4'video2frames[video] = max(list(map(lambda x:int(x.split('_')[-1].split('.')[0]), \glob.glob(f'../train/frames/{video}*'))))

取出视频对应的检测数据和每个视频的最大帧数,检测数据后面用来截取图像用的,最大帧数确保抽取的帧不超过这个范围

数据集

class MyDataset(Dataset):def __init__(self, df, aug=train_aug, mode='train'):self.df = dfself.frame = df.frame.valuesself.feature = df[feature_cols].fillna(-1).valuesself.players = df[['nfl_player_id_1','nfl_player_id_2']].valuesself.game_play = df.game_play.valuesself.aug = augself.mode = modedef __len__(self):return len(self.df)# @lru_cache(1024)# def read_img(self, path):#     return cv2.imread(path, 0)def __getitem__(self, idx):   window = 24frame = self.frame[idx]if self.mode == 'train':frame = frame + random.randint(-6, 6)players = []for p in self.players[idx]:if p == 'G':players.append(p)else:players.append(int(p))imgs = []for view in ['Endzone', 'Sideline']:video = self.game_play[idx] + f'_{view}.mp4'tmp = video2helmets[video]
#             tmp = tmp.query('@frame-@window<=frame<=@frame+@window')tmp[tmp['frame'].between(frame-window, frame+window)]tmp = tmp[tmp.nfl_player_id.isin(players)]#.sort_values(['nfl_player_id', 'frame'])tmp_frames = tmp.frame.valuestmp = tmp.groupby('frame')[['left','width','top','height']].mean()
#0.002sbboxes = []for f in range(frame-window, frame+window+1, 1):if f in tmp_frames:x, w, y, h = tmp.loc[f][['left','width','top','height']]bboxes.append([x, w, y, h])else:bboxes.append([np.nan, np.nan, np.nan, np.nan])bboxes = pd.DataFrame(bboxes).interpolate(limit_direction='both').valuesbboxes = bboxes[::4]if bboxes.sum() > 0:flag = 1else:flag = 0
#0.03sfor i, f in enumerate(range(frame-window, frame+window+1, 4)):img_new = np.zeros((256, 256), dtype=np.float32)if flag == 1 and f <= video2frames[video]:img = cv2.imread(f'../train/frames/{video}_{f:04d}.jpg', 0)x, w, y, h = bboxes[i]img = img[int(y+h/2)-128:int(y+h/2)+128,int(x+w/2)-128:int(x+w/2)+128].copy()img_new[:img.shape[0], :img.shape[1]] = imgimgs.append(img_new)
#0.06sfeature = np.float32(self.feature[idx])img = np.array(imgs).transpose(1, 2, 0)    img = self.aug(image=img)["image"]label = np.float32(self.df.contact.values[idx])return img, feature, label

模型

class Model(nn.Module):def __init__(self):super(Model, self).__init__()self.backbone = timm.create_model(CFG['model'], pretrained=True, num_classes=500, in_chans=13)self.mlp = nn.Sequential(nn.Linear(18, 64),nn.LayerNorm(64),nn.ReLU(),nn.Dropout(0.2),)self.fc = nn.Linear(64+500*2, 1)def forward(self, img, feature):b, c, h, w = img.shapeimg = img.reshape(b*2, c//2, h, w)img = self.backbone(img).reshape(b, -1)feature = self.mlp(feature)y = self.fc(torch.cat([img, feature], dim=1))return y

这里len(feature_cols)是18,所以mlp输入是18,在上面

            for i, f in enumerate(range(frame-window, frame+window+1, 4)):img_new = np.zeros((256, 256), dtype=np.float32)if flag == 1 and f <= video2frames[video]:img = cv2.imread(f'/openbayes/train/frames/{video}_{f:04d}.jpg', 0)x, w, y, h = bboxes[i]img = img[int(y+h/2)-128:int(y+h/2)+128,int(x+w/2)-128:int(x+w/2)+128].copy()img_new[:img.shape[0], :img.shape[1]] = imgimgs.append(img_new)

进行了抽帧,每个视角抽了13帧,两个视角,总计26帧,所以输入通道26,跟之前的比赛一样,也是提供两个视角

for view in ['Endzone', 'Sideline']:

损失函数

model = Model()
model.to(device)
model.train()
import torch.nn as nn
criterion = nn.BCEWithLogitsLoss()

这里用的交叉熵

评估指标

def evaluate(model, loader_val, *, compute_score=True, pbar=None):"""Predict and compute loss and score"""tb = time.time()in_training = model.trainingmodel.eval()loss_sum = 0.0n_sum = 0y_all = []y_pred_all = []if pbar is not None:pbar = tqdm(desc='Predict', nrows=78, total=pbar)total= len(loader_val)for ibatch,(img, feature, label) in tqdm(enumerate(loader_val),total = total):# img, feature, label = [x.to(device) for x in batch]img = img.to(device)feature = feature.to(device)n = label.size(0)label = label.to(device)with torch.no_grad():y_pred = model(img, feature)loss = criterion(y_pred.view(-1), label)n_sum += nloss_sum += n * loss.item()if pbar is not None:pbar.update(len(img))del loss, img, labelgc.collect()loss_val = loss_sum / n_sumret = {'loss': loss_val,'time': time.time() - tb}model.train(in_training) gc.collect()return ret

载入数据,设置学习率计划和优化器

train_set,valid_set = train_test_split(train_filtered,test_size=0.05, random_state=42,stratify = train_filtered['contact'])
train_set = MyDataset(train_set, train_aug, 'train')
train_loader = DataLoader(train_set, batch_size=CFG['train_bs'], shuffle=True, num_workers=12, pin_memory=True,drop_last=True)
valid_set = MyDataset(valid_set, valid_aug, 'test')
valid_loader = DataLoader(valid_set, batch_size=CFG['valid_bs'], shuffle=False, num_workers=12, pin_memory=True)
optimizer = torch.optim.AdamW(model.parameters(), lr=CFG['lr'], weight_decay=CFG['weight_decay'])
nbatch = len(train_loader)
warmup = CFG['epochs_warmup'] * nbatch
nsteps = CFG['epochs'] * nbatch 
scheduler = CosineLRScheduler(optimizer,warmup_t=warmup, warmup_lr_init=0.0, warmup_prefix=True,t_initial=(nsteps - warmup), lr_min=1e-6)    

开始训练,这里保存整个模型

for iepoch in range(CFG['epochs']):print('Epoch:', iepoch+1)loss_sum = 0.0n_sum = 0total = len(train_loader)# Trainfor ibatch,(img, feature, label) in tqdm(enumerate(train_loader),total = total):img = img.to(device)feature = feature.to(device)n = label.size(0)label = label.to(device)optimizer.zero_grad()y_pred = model(img, feature).squeeze(-1)loss = criterion(y_pred, label)loss_train = loss.item()loss_sum += n * loss_trainn_sum += nloss.backward()grad_norm = torch.nn.utils.clip_grad_norm_(model.parameters(),CFG['max_grad_norm'])optimizer.step()scheduler.step(iepoch * nbatch + ibatch + 1)val = evaluate(model, valid_loader)time_val += val['time']loss_train = loss_sum / n_sumdt = (time.time() - tb) / 60print('Epoch: %d Train Loss: %.4f Test Loss: %.4f Time: %.2f min' %(iepoch + 1, loss_train, val['loss'],dt))if val['loss'] < best_loss:best_loss = val['loss']# Save modelofilename = '/openbayes/home/best_model.pt'torch.save(model, ofilename)print(ofilename, 'written')del valgc.collect()dt = time.time() - tb
print(' %.2f min total, %.2f min val' % (dt / 60, time_val / 60))
gc.collect()

只保留权重可能会出现一些bug,保留整个模型比较稳妥

推理部分

这里我用TTA的版本

导入包

import os
import sys
sys.path.append('/kaggle/input/timm-0-6-9/pytorch-image-models-master')
import glob
import numpy as np
import pandas as pd
import random
import math
import gc
import cv2
from tqdm import tqdm
import time
from functools import lru_cache
import torch
from torch import nn
from torch.nn import functional as F
from torch.utils.data import Dataset, DataLoader
from torch.cuda.amp import autocast, GradScaler
import timm
import albumentations as A
from albumentations.pytorch import ToTensorV2
import matplotlib.pyplot as plt
from sklearn.metrics import matthews_corrcoef

数据处理

这里基本和前面一样,我全部放一起了

CFG = {'seed': 42,'model': 'convnext_small.fb_in1k','img_size': 256,'epochs': 10,'train_bs': 100, 'valid_bs': 64,'lr': 1e-3, 'weight_decay': 1e-6,'num_workers': 4
}
def seed_everything(seed):random.seed(seed)os.environ['PYTHONHASHSEED'] = str(seed)np.random.seed(seed)torch.manual_seed(seed)torch.cuda.manual_seed(seed)torch.cuda.manual_seed_all(seed)torch.backends.cudnn.deterministic = Truetorch.backends.cudnn.benchmark = Falseseed_everything(CFG['seed'])
device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
def expand_contact_id(df):"""Splits out contact_id into seperate columns."""df["game_play"] = df["contact_id"].str[:12]df["step"] = df["contact_id"].str.split("_").str[-3].astype("int")df["nfl_player_id_1"] = df["contact_id"].str.split("_").str[-2]df["nfl_player_id_2"] = df["contact_id"].str.split("_").str[-1]return dflabels = expand_contact_id(pd.read_csv("/kaggle/input/nfl-player-contact-detection/sample_submission.csv"))test_tracking = pd.read_csv("/kaggle/input/nfl-player-contact-detection/test_player_tracking.csv")test_helmets = pd.read_csv("/kaggle/input/nfl-player-contact-detection/test_baseline_helmets.csv")test_video_metadata = pd.read_csv("/kaggle/input/nfl-player-contact-detection/test_video_metadata.csv")
!mkdir -p ../work/framesfor video in tqdm(test_helmets.video.unique()):if 'Endzone2' not in video:!ffmpeg -i /kaggle/input/nfl-player-contact-detection/test/{video} -q:v 2 -f image2 /kaggle/work/frames/{video}_%04d.jpg -hide_banner -loglevel error
def create_features(df, tr_tracking, merge_col="step", use_cols=["x_position", "y_position"]):output_cols = []df_combo = (df.astype({"nfl_player_id_1": "str"}).merge(tr_tracking.astype({"nfl_player_id": "str"})[["game_play", merge_col, "nfl_player_id",] + use_cols],left_on=["game_play", merge_col, "nfl_player_id_1"],right_on=["game_play", merge_col, "nfl_player_id"],how="left",).rename(columns={c: c+"_1" for c in use_cols}).drop("nfl_player_id", axis=1).merge(tr_tracking.astype({"nfl_player_id": "str"})[["game_play", merge_col, "nfl_player_id"] + use_cols],left_on=["game_play", merge_col, "nfl_player_id_2"],right_on=["game_play", merge_col, "nfl_player_id"],how="left",).drop("nfl_player_id", axis=1).rename(columns={c: c+"_2" for c in use_cols}).sort_values(["game_play", merge_col, "nfl_player_id_1", "nfl_player_id_2"]).reset_index(drop=True))output_cols += [c+"_1" for c in use_cols]output_cols += [c+"_2" for c in use_cols]if ("x_position" in use_cols) & ("y_position" in use_cols):index = df_combo['x_position_2'].notnull()distance_arr = np.full(len(index), np.nan)tmp_distance_arr = np.sqrt(np.square(df_combo.loc[index, "x_position_1"] - df_combo.loc[index, "x_position_2"])+ np.square(df_combo.loc[index, "y_position_1"]- df_combo.loc[index, "y_position_2"]))distance_arr[index] = tmp_distance_arrdf_combo['distance'] = distance_arroutput_cols += ["distance"]df_combo['G_flug'] = (df_combo['nfl_player_id_2']=="G")output_cols += ["G_flug"]return df_combo, output_colsuse_cols = ['x_position', 'y_position', 'speed', 'distance','direction', 'orientation', 'acceleration', 'sa'
]test, feature_cols = create_features(labels, test_tracking, use_cols=use_cols)
test
test_filtered = test.query('not distance>2').reset_index(drop=True)
test_filtered['frame'] = (test_filtered['step']/10*59.94+5*59.94).astype('int')+1
test_filtered
del test, labels, test_tracking
gc.collect()
train_aug = A.Compose([A.HorizontalFlip(p=0.5),A.ShiftScaleRotate(p=0.5),A.RandomBrightnessContrast(brightness_limit=(-0.1, 0.1), contrast_limit=(-0.1, 0.1), p=0.5),A.Normalize(mean=[0.], std=[1.]),ToTensorV2()
])valid_aug = A.Compose([A.Normalize(mean=[0.], std=[1.]),ToTensorV2()
])
video2helmets = {}
test_helmets_new = test_helmets.set_index('video')
for video in tqdm(test_helmets.video.unique()):video2helmets[video] = test_helmets_new.loc[video].reset_index(drop=True)del test_helmets, test_helmets_new
gc.collect()
video2frames = {}for game_play in tqdm(test_video_metadata.game_play.unique()):for view in ['Endzone', 'Sideline']:video = game_play + f'_{view}.mp4'video2frames[video] = max(list(map(lambda x:int(x.split('_')[-1].split('.')[0]), \glob.glob(f'/kaggle/work/frames/{video}*'))))
class MyDataset(Dataset):def __init__(self, df, aug=valid_aug, mode='train'):self.df = dfself.frame = df.frame.valuesself.feature = df[feature_cols].fillna(-1).valuesself.players = df[['nfl_player_id_1','nfl_player_id_2']].valuesself.game_play = df.game_play.valuesself.aug = augself.mode = modedef __len__(self):return len(self.df)# @lru_cache(1024)# def read_img(self, path):#     return cv2.imread(path, 0)def __getitem__(self, idx):   window = 24frame = self.frame[idx]if self.mode == 'train':frame = frame + random.randint(-6, 6)players = []for p in self.players[idx]:if p == 'G':players.append(p)else:players.append(int(p))imgs = []for view in ['Endzone', 'Sideline']:video = self.game_play[idx] + f'_{view}.mp4'tmp = video2helmets[video]
#             tmp = tmp.query('@frame-@window<=frame<=@frame+@window')tmp[tmp['frame'].between(frame-window, frame+window)]tmp = tmp[tmp.nfl_player_id.isin(players)]#.sort_values(['nfl_player_id', 'frame'])tmp_frames = tmp.frame.valuestmp = tmp.groupby('frame')[['left','width','top','height']].mean()
#0.002sbboxes = []for f in range(frame-window, frame+window+1, 1):if f in tmp_frames:x, w, y, h = tmp.loc[f][['left','width','top','height']]bboxes.append([x, w, y, h])else:bboxes.append([np.nan, np.nan, np.nan, np.nan])bboxes = pd.DataFrame(bboxes).interpolate(limit_direction='both').valuesbboxes = bboxes[::4]if bboxes.sum() > 0:flag = 1else:flag = 0
#0.03sfor i, f in enumerate(range(frame-window, frame+window+1, 4)):img_new = np.zeros((256, 256), dtype=np.float32)if flag == 1 and f <= video2frames[video]:img = cv2.imread(f'/kaggle/work/frames/{video}_{f:04d}.jpg', 0)x, w, y, h = bboxes[i]img = img[int(y+h/2)-128:int(y+h/2)+128,int(x+w/2)-128:int(x+w/2)+128].copy()img_new[:img.shape[0], :img.shape[1]] = imgimgs.append(img_new)
#0.06sfeature = np.float32(self.feature[idx])img = np.array(imgs).transpose(1, 2, 0)    img = self.aug(image=img)["image"]label = np.float32(self.df.contact.values[idx])return img, feature, label

查看截取出来的图片

img, feature, label = MyDataset(test_filtered, valid_aug, 'test')[0]
plt.imshow(img.permute(1,2,0)[:,:,7])
plt.show()
img.shape, feature, label

进行推理

class Model(nn.Module):def __init__(self):super(Model, self).__init__()self.backbone = timm.create_model(CFG['model'], pretrained=False, num_classes=500, in_chans=13)self.mlp = nn.Sequential(nn.Linear(18, 64),nn.LayerNorm(64),nn.ReLU(),nn.Dropout(0.2),# nn.Linear(64, 64),# nn.LayerNorm(64),# nn.ReLU(),# nn.Dropout(0.2))self.fc = nn.Linear(64+500*2, 1)def forward(self, img, feature):b, c, h, w = img.shapeimg = img.reshape(b*2, c//2, h, w)img = self.backbone(img).reshape(b, -1)feature = self.mlp(feature)y = self.fc(torch.cat([img, feature], dim=1))return y
test_set = MyDataset(test_filtered, valid_aug, 'test')
test_loader = DataLoader(test_set, batch_size=CFG['valid_bs'], shuffle=False, num_workers=CFG['num_workers'], pin_memory=True)model = Model().to(device)
model = torch.load('/kaggle/input/track-weight/best_model.pt')model.eval()y_pred = []
with torch.no_grad():tk = tqdm(test_loader, total=len(test_loader))for step, batch in enumerate(tk):if(step % 4 != 3):img, feature, label = [x.to(device) for x in batch]output1 = model(img, feature).squeeze(-1)output2 = model(img.flip(-1), feature).squeeze(-1)y_pred.extend(0.2*(output1.sigmoid().cpu().numpy()) + 0.8*(output2.sigmoid().cpu().numpy()))else:img, feature, label = [x.to(device) for x in batch]output = model(img.flip(-1), feature).squeeze(-1)y_pred.extend(output.sigmoid().cpu().numpy())    y_pred = np.array(y_pred)

这里用了翻转,tta算是一种隐式模型集成

提交

th = 0.29test_filtered['contact'] = (y_pred >= th).astype('int')sub = pd.read_csv('/kaggle/input/nfl-player-contact-detection/sample_submission.csv')sub = sub.drop("contact", axis=1).merge(test_filtered[['contact_id', 'contact']], how='left', on='contact_id')
sub['contact'] = sub['contact'].fillna(0).astype('int')sub[["contact_id", "contact"]].to_csv("submission.csv", index=False)sub.head()

推理代码链接和成绩

infer_code | Kaggle

修改版本

之前的,效果不是很好,我还是换成resnet50进行训练,结果如下,链接和权重如下

infer_code | Kaggle

best_weight | Kaggle


文章转载自:
http://subchloride.rwzc.cn
http://frown.rwzc.cn
http://agent.rwzc.cn
http://hereditism.rwzc.cn
http://visuospatial.rwzc.cn
http://resorcinolphthalein.rwzc.cn
http://reclassify.rwzc.cn
http://desirable.rwzc.cn
http://incorporable.rwzc.cn
http://panmixia.rwzc.cn
http://luxation.rwzc.cn
http://hindustan.rwzc.cn
http://adventureful.rwzc.cn
http://sternmost.rwzc.cn
http://burlap.rwzc.cn
http://hyposarca.rwzc.cn
http://muleteer.rwzc.cn
http://predicatory.rwzc.cn
http://timeserving.rwzc.cn
http://speiss.rwzc.cn
http://ridiculous.rwzc.cn
http://australopithecus.rwzc.cn
http://howling.rwzc.cn
http://nabber.rwzc.cn
http://urushiol.rwzc.cn
http://monarticular.rwzc.cn
http://conjuncture.rwzc.cn
http://conglomeratic.rwzc.cn
http://aruba.rwzc.cn
http://seditty.rwzc.cn
http://flabelliform.rwzc.cn
http://maryolatry.rwzc.cn
http://laddertron.rwzc.cn
http://disenroll.rwzc.cn
http://strongyloidiasis.rwzc.cn
http://abominably.rwzc.cn
http://disgregate.rwzc.cn
http://stope.rwzc.cn
http://scutellate.rwzc.cn
http://snaky.rwzc.cn
http://excitation.rwzc.cn
http://loofah.rwzc.cn
http://erotological.rwzc.cn
http://homosex.rwzc.cn
http://chalcenterous.rwzc.cn
http://striae.rwzc.cn
http://railroading.rwzc.cn
http://freewheel.rwzc.cn
http://forbade.rwzc.cn
http://transportee.rwzc.cn
http://scientist.rwzc.cn
http://preprofessional.rwzc.cn
http://saboteur.rwzc.cn
http://fossa.rwzc.cn
http://phraseology.rwzc.cn
http://cuttable.rwzc.cn
http://eophyte.rwzc.cn
http://soilage.rwzc.cn
http://histographic.rwzc.cn
http://shishi.rwzc.cn
http://reedbuck.rwzc.cn
http://distasteful.rwzc.cn
http://kerchiefed.rwzc.cn
http://crustose.rwzc.cn
http://ohone.rwzc.cn
http://exempla.rwzc.cn
http://bladder.rwzc.cn
http://cowman.rwzc.cn
http://nouny.rwzc.cn
http://mutilate.rwzc.cn
http://koniology.rwzc.cn
http://heraldic.rwzc.cn
http://karyotheca.rwzc.cn
http://kythera.rwzc.cn
http://teledrama.rwzc.cn
http://horizon.rwzc.cn
http://civility.rwzc.cn
http://manifestly.rwzc.cn
http://unclaimed.rwzc.cn
http://cascalho.rwzc.cn
http://ichnite.rwzc.cn
http://numinosum.rwzc.cn
http://democrat.rwzc.cn
http://utah.rwzc.cn
http://novice.rwzc.cn
http://hypercorrection.rwzc.cn
http://nutsedge.rwzc.cn
http://cocobolo.rwzc.cn
http://schistorrhachis.rwzc.cn
http://plastiqueur.rwzc.cn
http://rampant.rwzc.cn
http://pileup.rwzc.cn
http://notandum.rwzc.cn
http://personalism.rwzc.cn
http://advertorial.rwzc.cn
http://corroboree.rwzc.cn
http://rudder.rwzc.cn
http://demurely.rwzc.cn
http://myelogram.rwzc.cn
http://grime.rwzc.cn
http://www.hrbkazy.com/news/84541.html

相关文章:

  • 怎么在网站上做宣传竞价托管哪家便宜
  • 上海地铁美女卖身求财称为支援商业网站建设网站排名优化软件有哪些
  • b2b网站优化怎么做排名优化服务
  • 阿里妈妈网站推广提交怎样做app推广
  • 小说网站怎么做防采集威海百度seo
  • 桂林建网站哪家好全球搜官网
  • 自助建网站工具百度排名点击器
  • 安徽教育云网站建设百度信息
  • 口碑营销什么意思太原百度快速优化
  • 上海嘉定网站设计免费一键生成个人网站
  • web高端开发百度上海推广优化公司
  • 网站权重降低搜索引擎广告推广
  • 武汉app网站建设最近的电脑培训学校
  • 大连零基础网站建设教学公司百度下载并安装到桌面
  • 仿站怎么修改成自己的网站外贸怎么建立自己的网站
  • 网站后台数据seo内链优化
  • wordpress主题百度网盘北京网站优化培训
  • 我想给别人做网站百度百科怎么创建自己
  • 专业做网站公司24小时接单如何做好推广工作
  • 网站模板加后台鞋子软文推广300字
  • java做的网站很快上海网络推广营销策划方案
  • 企业网站建设cms销售管理软件
  • 丹徒网站建设多少钱西安竞价托管
  • 浙江省建设厅门户网站seo上首页排名
  • 大都会app官方下载seo排名优化技术
  • 四川省人民政府办公厅主任郑州搜索引擎优化公司
  • 2023b站大全推广大全免费版公司网站费用
  • 用顶级域名做网站好吗网络营销是什么专业类别
  • 建设一个网站首先需要网站友情链接
  • 网站轮播图用啥软件做电子商务平台有哪些