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Ultralytics-OneClick\nUltralytics-YOLO11 免安装一键启动整合包\n\n## Ultralytics说明\nUltralytics YOLO11是一款尖端、最先进的（SOTA）型号，它建立在之前YOLO版本的成功之上，并引入了新的功能和改进，以进一步提高性能和灵活性。YOLO11的设计快速、准确、易于使用，使其成为各种目标检测和跟踪、实例分割、图像分类和姿态估计任务的绝佳选择。\n\n为方便大家快速上手体验，省去安装部署耗时，我制作了最新版一键启动整合包\n\n## Ultralytics整合包使用说明\n\n软件下载解压后直接双击【启动软件.exe】即可打开UI界面。\n\n首先选择待处理文件，可以是图片或视频的路径地址，如果选择处理摄像头内容的话输入框里填0\n\n保存位置即处理结果保存目录\n\n模型即yolo模型\n\n置信度阈值就是物体识别检测结果是否更可靠更接近1，如果识别物体值低于这个值的话就不标记处理。置信度阈值范围（0~1），自己操作一下就明白效果了。\n\nIoU 阈值（0~1）用于衡量预测的边界框与真实目标的边界框之间的重叠程度。\n\n指定类别就是你想要检测什么物体，0人，1自行车，2汽车，只检测人的话这里就填0，人和汽车，这里就填0,2，用英文逗号隔开。\n\n视频教程：[youtube\u003e\u003e](https://www.youtube.com/watch?v=kSG0oyrcVY4)\n\n## 注意事项\n\n整合包只支持Windows 10或11系统\n\n软件运行路径中不要有非英文字符和空格\n\n## ultralytics一键启动整合包下载链接\n\nhttps://pan.baidu.com/s/1vH3bYqrNhwN3NhbmG3F2Zw?pwd=2ct9\n\n## YOLO物体类别代码如下\n\n索引\t类别名称\t索引\t类别名称\t索引\t类别名称\n0\tperson（人）\t1\tbicycle（自行车）\t2\tcar（汽车）\n3\tmotorcycle（摩托车）\t4\tairplane（飞机）\t5\tbus（公交车）\n6\ttrain（火车）\t7\ttruck（卡车）\t8\tboat（船）\n9\ttraffic light（红绿灯）\t10\tfire hydrant（消防栓）\t11\tstop sign（停车标志）\n12\tparking meter（停车计时器）\t13\tbench（长凳）\t14\tbird（鸟）\n15\tcat（猫）\t16\tdog（狗）\t17\thorse（马）\n18\tsheep（羊）\t19\tcow（牛）\t20\telephant（大象）\n21\tbear（熊）\t22\tzebra（斑马）\t23\tgiraffe（长颈鹿）\n24\tbackpack（背包）\t25\tumbrella（雨伞）\t26\thandbag（手提包）\n27\ttie（领带）\t28\tsuitcase（行李箱）\t29\tfrisbee（飞盘）\n30\tskis（滑雪板）\t31\tsnowboard（单板滑雪）\t32\tsports ball（球）\n33\tkite（风筝）\t34\tbaseball bat（棒球棒）\t35\tbaseball glove（棒球手套）\n36\tskateboard（滑板）\t37\tsurfboard（冲浪板）\t38\ttennis racket（网球拍）\n39\tbottle（瓶子）\t40\twine glass（酒杯）\t41\tcup（杯子）\n42\tfork（叉子）\t43\tknife（刀）\t44\tspoon（勺子）\n45\tbowl（碗）\t46\tbanana（香蕉）\t47\tapple（苹果）\n48\tsandwich（三明治）\t49\torange（橙子）\t50\tbroccoli（西兰花）\n51\tcarrot（胡萝卜）\t52\thot dog（热狗）\t53\tpizza（披萨）\n54\tdonut（甜甜圈）\t55\tcake（蛋糕）\t56\tchair（椅子）\n57\tcouch（沙发）\t58\tpotted plant（盆栽）\t59\tbed（床）\n60\tdining table（餐桌）\t61\ttoilet（厕所）\t62\tTV（电视）\n63\tlaptop（笔记本电脑）\t64\tmouse（鼠标）\t65\tremote（遥控器）\n66\tkeyboard（键盘）\t67\tcell phone（手机）\t68\tmicrowave（微波炉）\n69\toven（烤箱）\t70\ttoaster（烤面包机）\t71\tsink（洗手池）\n72\trefrigerator（冰箱）\t73\tbook（书）\t74\tclock（时钟）\n75\tvase（花瓶）\t76\tscissors（剪刀）\t77\tteddy bear（泰迪熊）\n78\thair drier（吹风机）\t79\ttoothbrush（牙刷）\t–\t–\n\n## ultralytics 项目链接\nhttps://github.com/ultralytics/ultralytics\n","project_url":"https://awesome.ecosyste.ms/api/v1/projects/github.com%2Faidayang%2Fultralytics-oneclick","html_url":"https://awesome.ecosyste.ms/projects/github.com%2Faidayang%2Fultralytics-oneclick","lists_url":"https://awesome.ecosyste.ms/api/v1/projects/github.com%2Faidayang%2Fultralytics-oneclick/lists"}