lidar
by BytesAgain
LiDAR technology reference — point cloud processing, scan types, coordinate systems, and applications. Use when working with LiDAR data, configuring scanners, or processing 3D point clouds.
安装
claude skill add --url github.com/openclaw/skills/tree/main/skills/bytesagain1/lidar文档
LiDAR — Light Detection and Ranging Reference
Quick-reference skill for LiDAR technology, point cloud data processing, scanner configuration, and mapping applications.
When to Use
- Processing point cloud data (LAS/LAZ/PCD formats)
- Configuring LiDAR scanners for survey or mapping
- Understanding scan patterns and coordinate systems
- Filtering, classifying, or visualizing point cloud data
- Choosing between airborne, terrestrial, and mobile LiDAR
Commands
intro
scripts/script.sh intro
LiDAR fundamentals — how it works, types of systems, key specifications.
formats
scripts/script.sh formats
Point cloud file formats: LAS, LAZ, PCD, E57, PLY, XYZ.
processing
scripts/script.sh processing
Point cloud processing pipeline — filtering, registration, classification, meshing.
coordinate
scripts/script.sh coordinate
Coordinate systems and georeferencing — WGS84, UTM, local, IMU/GNSS integration.
scanners
scripts/script.sh scanners
LiDAR scanner types and major manufacturers — Velodyne, SICK, Leica, FARO, Ouster.
applications
scripts/script.sh applications
LiDAR applications: autonomous vehicles, surveying, forestry, archaeology, BIM.
tools
scripts/script.sh tools
Software tools for point cloud processing — CloudCompare, PDAL, PCL, LAStools, QGIS.
checklist
scripts/script.sh checklist
LiDAR survey planning and quality assurance checklist.
help
scripts/script.sh help
version
scripts/script.sh version
Configuration
| Variable | Description |
|---|---|
LIDAR_DIR | Data directory (default: ~/.lidar/) |
Powered by BytesAgain | bytesagain.com | hello@bytesagain.com
相关 Skills
可观测性设计
by alirezarezvani
面向生产系统规划可落地的可观测性体系,串起指标、日志、链路追踪与 SLI/SLO、错误预算、告警和仪表盘设计,适合搭建监控平台与优化故障响应。
✎ 把监控、日志、链路追踪串起来,帮助团队从设计阶段构建可观测性,排障更快、系统演进更稳。
资深开发运维
by alirezarezvani
覆盖 CI/CD 流水线生成、Terraform 基建脚手架和自动化部署,适合在 AWS、GCP、Azure 上搭建云原生发布流程,管理 Docker/Kubernetes 基础设施并持续优化交付。
✎ 把CI/CD、基础设施即代码、容器与监控串成一条交付链,尤其适合AWS/GCP/Azure多云团队高效落地。
环境密钥管理
by alirezarezvani
统一梳理dev/staging/prod的.env和密钥流程,自动生成.env.example、校验必填变量、扫描Git历史泄漏,并联动Vault、AWS SSM、1Password、Doppler完成轮换。
✎ 统一管理环境变量、密钥与配置,减少泄露和部署混乱,安全治理与团队协作一起做好,DevOps 场景很省心。
相关 MCP 服务
kubefwd
编辑精选by txn2
kubefwd 是让 AI 帮你批量转发 Kubernetes 服务到本地的开发神器。
✎ 微服务开发者最头疼的本地调试问题,它一键搞定——自动分配 IP 避免端口冲突,还能用自然语言查询状态。但依赖 AI 工作流,纯命令行爱好者可能觉得不够直接。
Cloudflare
编辑精选by Cloudflare
Cloudflare MCP Server 是让你用自然语言管理 Workers、KV 和 R2 等云资源的工具。
✎ 这个工具解决了开发者频繁切换控制台和文档的痛点,特别适合那些在 Cloudflare 上部署无服务器应用、需要快速调试或管理配置的团队。不过,由于它依赖多个子服务器,初次设置可能有点繁琐,建议先从 Workers Bindings 这类核心功能入手。
Terraform
编辑精选by hashicorp
Terraform MCP Server 是让 AI 助手直接操作 Terraform Registry 和 HCP Terraform 的桥梁。
✎ 如果你经常在 Terraform 里翻文档找模块配置,这个服务器能省不少时间——直接问 Claude 就能生成准确的代码片段。最适合管理多云基础设施的团队,但注意它目前只适合本地使用,别在生产环境里暴露 HTTP 端点。