Update zh_CN.json

pull/3/head
dtlnor 2022-11-22 17:08:40 +09:00
parent 9f3ffc478f
commit 044feebdb0
1 changed files with 21 additions and 3 deletions

View File

@ -221,7 +221,7 @@
"Include Separate Images": "生成图表时,保留每一张图像",
"Keep -1 for seeds": "保持随机种子为-1",
"Z type": "Z轴类型",
"Z values": "Z轴值",
"Z values": "Z轴值",
"Primary detection model (A)": "首要检测模型 (A)",
"Detection confidence threshold % (A)": "检测置信阈值 % (A)",
"Dilation factor (A)": "扩张(Dilation)因子 (A)",
@ -505,7 +505,13 @@
"Dataset Directory": "数据集目录",
"Class Prompt": "类(Class)提示词",
"Classification Dataset Directory": "分类(Classification)数据集目录",
"Existing Prompt Contents": "现存的提示词内容",
"Description": "描述",
"Instance Token + Description": "实例的词元(Token) + 描述",
"Class Token + Description": "类的词元(Token) + 描述",
"Instance Token + Class Token + Description": "实例的词元 + 类的词元 + 描述",
"Instance token to swap": "要互换的实例的词元(Token)",
"Class token(s) to swap, can be comma-separated": "要互换的类的词元(Token),可以是以英文逗号分割的",
"Total Number of Class/Reg Images": "用于分类/规范化的图像总数",
"Classification Image Negative Prompt": "分类(classification)图像反向提示词",
"Classification CFG Scale": "分类提示词相关性(Classification CFG scale)",
@ -812,6 +818,7 @@
"stable-diffusion-webui-prompt-travel": "提示词变迁",
"stable-diffusion-webui-randomize": "随机化",
"stable-diffusion-webui-tokenizer": "词元分析器(tokenizer)",
"stable-diffusion-webui-wd14-tagger": "Waifu Diffusion 1.4 标签器",
"stable-diffusion-webui-wildcards": "通配符",
"training-picker": "训练图挑选器",
"unprompted": "非文本(代码化)提示词",
@ -867,6 +874,7 @@
"Comma separated list": "以逗号分割的列表",
"Range of stepped values (min, max, step)": "含步幅的随机范围 (最小, 最大, 步幅)",
"Float value from 0 to 1": "从 0 到 1 的浮点数数值",
"Loads weights from checkpoint before making images. You can either use hash or a part of filename (as seen in settings) for checkpoint name. Recommended to use with Y axis for less switching.": "在生成图像之前从模型(ckpt)中加载权重。你可以使用哈希值或文件名的一部分(如设置中所示)作为模型(ckpt)名称。建议用在Y轴上以减少过程中模型的切换",
"Comma separated list. Specify ckpt OR ckpt:word": "以逗号分割的列表。用以指定 ckpt 或 ckpt:字词",
"Separate values for X axis using commas.": "使用逗号分隔 X 轴的值",
"Separate values for Y axis using commas.": "使用逗号分隔 Y 轴的值",
@ -953,7 +961,7 @@
"Max Gradient norms.": "最大梯度范数(Max Gradient norms)",
"Pad the input images token lenght to this amount. You probably want to do this.": "将输入图像的词元长度垫齐到此数量。你可能会想要这样做",
"Subject class to crop (leave blank to auto-detect)": "要裁剪的主体类别(Subject class)(留空以自动检测)",
"Subject Name to replace class with in captions": "描述文本中要替换类(class)的主体名(subject)",
"Subject Name to replace class with in cations": "描述文本中要替换类(class)的主体名(subject)",
"Restore low quality faces using GFPGAN neural network": "使用 GFPGAN 神经网络修复低质量面部",
"symbol:color-hex, symbol:color-hex, ...": "文字:颜色代码, 文字:颜色代码, ...",
"e.g. A portrait photo of embedding_name": "示例: A portrait photo of embedding_name",
@ -971,6 +979,15 @@
"Leave empty for auto": "留空时自动生成",
"NAIConvert": "NAI转换",
"History": "历史记录",
"Generate all possible prompts up to a maximum of Batch count * Batch size)": "生成不超过(生成批次 * 每批数量)的所有可能的提示词",
"Automatically update your prompt with interesting modifiers. (Runs slowly the first time)": "使用有趣的修饰符自动更新你的提示词。(第一次运行会比较慢)",
"Generate random prompts from lexica.art (your prompt is used as a search query).": "从 lexica.art 生成随机提示词(你的提示词会被用作搜索查询)",
"Use the same seed for all prompts in this batch": "对这批次中的所有提示词使用相同的种子",
"Write all generated prompts to a file": "将所有生成的提示词写入文件",
"If this is set, then random prompts are generated, even if the seed is the same.": "如果设置了此项,则会生成随机提示词,即使种子相同",
"Useful for I'm feeling lucky and Magic Prompt. If this is set, then negative prompts are not generated.": "对手气不错和魔法提示词很有用。如果设置了此项,则不会生成否定提示",
"Disable image generation. Useful if you only want to generate text prompts.": "禁用图像生成。如果你只想生成文本提示词的话",
"Add emphasis to a randomly selected keyword in the prompt.": "在提示词中随机选择一个关键字加上强调符",
"Action": "行动",
"Aesthetic Gradients": "美术风格梯度",
"Create an embedding from one or few pictures and use it to apply their style to generated images.": "用一张或多张图像创建一个 Embedding并用它将图集的风格转移到要生成的图像上",
@ -1018,6 +1035,8 @@
"Auto TLS-HTTPS": "自动 TLS-HTTPS",
"Allows you to easily, or even completely automatically start using HTTPS.": "让你可以很简单地自动配置HTTPS",
"Towards Controllable One-Shot Text-to-Image Generation via Contrastive Prompt-Tuning.": "通过对比调整提示词,实现可控的单发文本到图像生成",
"WD 1.4 Tagger": "WD 1.4 标签器",
"Uses a trained model file, produces WD 1.4 Tags. Model link - https://mega.nz/file/ptA2jSSB#G4INKHQG2x2pGAVQBn-yd_U5dMgevGF8YYM9CR_R1SY": "使用经过训练的模型文件,生成 Waifu Diffusion 1.4 标签。模型链接 - https://mega.nz/file/ptA2jSSB#G4INKHQG2x2pGAVQBn-yd_U5dMgevGF8YYM9CR_R1SY",
"zh_CN Localization": "简体中文语言包",
"Simplified Chinese localization": "简体中文本地化",
"zh_TW Localization": "正體中文語言包",
@ -1047,7 +1066,6 @@
"Process an image, use it as an input, repeat.": "处理一张图像,将其作为输入,并重复",
"Insert selected styles into prompt fields": "在提示词中插入选定的模版风格",
"Save current prompts as a style. If you add the token {prompt} to the text, the style use that as placeholder for your prompt when you use the style in the future.": "将当前的提示词保存为模版风格。如果你在文本中添加{prompt}标记,那么将来你使用该模版风格时,你现有的提示词会替换模版风格中的{prompt}",
"Loads weights from checkpoint before making images. You can either use hash or a part of filename (as seen in settings) for checkpoint name. Recommended to use with Y axis for less switching.": "在生成图像之前从模型(ckpt)中加载权重。你可以使用哈希值或文件名的一部分(如设置中所示)作为模型(ckpt)名称。建议用在Y轴上以减少过程中模型的切换",
"Torch active: Peak amount of VRAM used by Torch during generation, excluding cached data.\nTorch reserved: Peak amount of VRAM allocated by Torch, including all active and cached data.\nSys VRAM: Peak amount of VRAM allocation across all applications / total GPU VRAM (peak utilization%).": "Torch active 在生成过程中Torch使用的显存(VRAM)峰值,不包括缓存的数据。\nTorch reserved Torch 分配的显存(VRAM)的峰值量,包括所有活动和缓存数据。\nSys VRAM 所有应用程序分配的显存(VRAM)的峰值量 / GPU 的总显存(VRAM)(峰值利用率%",
"Uscale the image in latent space. Alternative is to produce the full image from latent representation, upscale that, and then move it back to latent space.": "放大潜空间中的图像。而另一种方法是,从潜变量表达中直接解码并生成完整的图像,接着放大它,然后再将其编码回潜空间",
"Start drawing": "开始绘制",