惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

B
Blog RSS Feed
博客园_首页
N
News | PayPal Newsroom
有赞技术团队
有赞技术团队
The Hacker News
The Hacker News
OSCHINA 社区最新新闻
OSCHINA 社区最新新闻
The Cloudflare Blog
S
SegmentFault 最新的问题
Jina AI
Jina AI
人人都是产品经理
人人都是产品经理
P
Privacy & Cybersecurity Law Blog
AI
AI
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
Schneier on Security
Schneier on Security
博客园 - 三生石上(FineUI控件)
月光博客
月光博客
量子位
Forbes - Security
Forbes - Security
爱范儿
爱范儿
云风的 BLOG
云风的 BLOG
SecWiki News
SecWiki News
Last Week in AI
Last Week in AI
酷 壳 – CoolShell
酷 壳 – CoolShell
T
Tor Project blog
Recorded Future
Recorded Future
A
About on SuperTechFans
J
Java Code Geeks
The Register - Security
The Register - Security
PCI Perspectives
PCI Perspectives
H
Hacker News: Front Page
V2EX - 技术
V2EX - 技术
S
Secure Thoughts
V
Vulnerabilities – Threatpost
Hacker News: Ask HN
Hacker News: Ask HN
MongoDB | Blog
MongoDB | Blog
N
Netflix TechBlog - Medium
freeCodeCamp Programming Tutorials: Python, JavaScript, Git & More
Scott Helme
Scott Helme
T
The Exploit Database - CXSecurity.com
Y
Y Combinator Blog
AWS News Blog
AWS News Blog
D
Darknet – Hacking Tools, Hacker News & Cyber Security
IT之家
IT之家
T
The Blog of Author Tim Ferriss
G
Google Developers Blog
C
CERT Recently Published Vulnerability Notes
L
LangChain Blog
F
Full Disclosure
Application and Cybersecurity Blog
Application and Cybersecurity Blog
The GitHub Blog
The GitHub Blog

Show HN

GitHub - steveking-gh/firmion: Firmion is DSL and engine for firmware image generation. GitHub - villagesql/villagesql-skills: Agent skills for VillageSQL - gemini-cli-extension; claude-code-plugin GitHub - flightdeckhq/flightdeck: Observability and control plane for AI agents. CSP Radar GitHub - Light-Heart-Labs/DreamServer: Turn your PC, Mac, or Linux box into an AI server. LLM inference, chat UI, voice, agents, workflows, RAG, and image generation. GitHub - Diplomat-ai/diplomat-agent-ts: What can your TypeScript AI agent do to the real world? Scan your code. See which tool calls have zero checks Code Block Selector - Visual Studio Marketplace Prometheus dependency graph — interactive showcase | Riftmap Show HN: I made a vi-like modal keyboard plugin for Figma GitHub - run-llama/liteparse: A fast, helpful, and open-source document parser GitHub - dalemyers/Roar: A macOS CLI tool for notifications GitHub - district-solutions/open-agent-tools-coder: Enables small-to-large self-hosted ai models to use local source code when running tool-calling agentic workloads. We actively data mine 20,900+ (2+ TB) popular github repos using large and small ai models to create reuseable: json, markdown and parquet files for local-first tool-calling models. GitHub - progapandist/stripeek: A local TUI proxy for real-time Stripe API debugging, built for navigating complex payloads fast. GitHub - sir1st/hermes-desktop: All-in-one cross-platform desktop app for Hermes Agent — bundles Python + hermes-agent + hermes-web-ui GitHub - astefanutti/shaderbang: Shebang for Shaders Show HN: Generate Claude Code Workflows using Spec Driven Development approach GitHub - nixys/nxs-universal-chart: The Helm chart you can use to install any of your applications into Kubernetes/OpenShift Show HN: AI agents for UK GDAD PCF roles and their skills The Two Pillars: Mixer Mode and Meta-Software in the Reorganization of Software Work After AI GitHub - JaiCode08/teleport-env What 1,000+ Harness Experiments Taught Me About Self-Improving Agents Show HN: Liiists, a Markdown-first, iOS and CLI list app SwiperTab – Get this Extension for 🦊 Firefox (en-US) GitHub - kouhxp/fftext: Summarize, explain, fact-check, or translate any text, URL, or file. No GPU. No cloud. One command GitHub - sweetpad-dev/sweetpad: Develop Swift/iOS projects using VSCode GitHub - dogmaticdev/IRON: IRON a.k.a. Intermediate Representation Object Notation is a Interpreter/Database that is used to create Programming Languages. GitHub - sjhalani7/vaen: Package your AI coding harness into a portable .agent file, and share it across repos, teams, & the community without ever having to copy-paste instructions, skills, MCP config, or secrets. Show HN: Gandalf the Grader Show HN: Citadeld – replay any CI failure locally from a single file GitHub - tdortman/cuSBF: High-Performance GPU Super Bloom Filter coral-ai/claude-code-token-xray at main · Coral-Bricks-AI/coral-ai GitHub - ulyssestenn/funes: Funes is a Git-based framework for LLM-managed knowledge work: an AI Librarian ingests raw sources, builds an interlinked Markdown knowledge base, and uses it to produce cited reports, analyses, and other outputs. GitHub - ThatXliner/gah: Git Add Hunk, built for agents to use GitHub - harmont-dev/harmont-cli: Command-line client for the Harmont CI platform GitHub - brooksmcmillin/mcp-authflow: OAuth 2.0 Authorization Server framework for MCP servers GitHub - javaid-codes/audit-supply-chain-agents GitHub - amorey/gochan: A small library of common channel architectures for Go, inspired by Rust GitHub - arifozgun/OpenGem: Free, Open-Source AI API Gateway with Gemini, OpenAI & Anthropic Compatibility in 1 file GitHub - Pranesh950/BioPetals: 🌸 Run BIOxAI models at home, BitTorrent-style. Fine-tuning and inference up to 10x faster than offloading GitHub - cnguyen14/bounty-doctor: Diagnose a GitHub bounty issue before you waste hours: detects honeypot scam repos, AI-bot attempt swarms, and stale contests. Show HN: CoreMCP – MCP Server for On-Prem DBs Show HN: KittyHTML – Render HTML/CSS as an inline image in your terminal GitHub - bingud/filemat: Web-based file manager Show HN: TruthLens – Free multi-signal deepfake image detector GitHub - apexlocal-jz/claude-usage-tray: Windows system-tray app showing your Claude Code rate-limit usage at a glance. Zero deps, ~300 lines of PowerShell. Cross-IDE (works regardless of VS Code, Cursor, plain terminal). Release v0.1.2.1 · kouhxp/yapsnap GitHub - noopolis/moltnet: Self-hostable chat network for AI agents. Pre-built bridges for Claude Code, Codex, and the Claws. Rooms, DMs, history. No Slack bots, no Matrix, no glue code. GitHub - tamerh/enju: Coordinating Humans, AI Agents, and Compute as Peers on a Shared Workflow Graph Show HN: Continuity-auth – Respect-weighted rate limits for the open web GitHub - luml-ai/luml: AI lifecycle platform where engineers and agents track experiments, train models, and ship to production. GitHub - mrdanielcasper/CoreTex: A UNIX-inspired, biomimetic, flat-file AI harness and knowledge engine. GitHub - clemg/pierre-github: Pierre's diffs.com and trees.software for Github GitHub - lyriks-io/unspaghettit: Behavior-driven AI development without prompt spaghetti. GitHub - sofumel/claude-handoff-revive: Resume Claude Code work after rate/usage/context limits without replaying the prior transcript. Auto-saves at 90%/95% usage. Plugin-installable, 10 languages. GitHub - dotexorg/saferpc: Typed, end-to-end encrypted RPC over any bidirectional channel. GitHub - BeeZeeAgent/beezee: Agent harness orchestration Legato Next.js Boilerplate for Internal Tools · CoreUI GitHub - clark-labs-inc/clark-hash: Clark Hash, 32x smaller searchable sketches for embeddings GitHub - ZeroPointRepo/youtube-mcp: The fastest YouTube transcript + YouTube search MCP for AI agents. Try for free. Typing Mastery — climb toward 100+ WPM, deliberately GitHub - Andebugulin/Awareen GitHub - fayzan123/claude-workflow-composer: Visual desktop app for composing multi-agent coding workflows. Drag agents, attach skills and MCPs, wire handoffs, export to .claude/ GitHub - harshaneel/humanize: Best static AI text humanizer. Two research-grounded skills that work in any LLM (Claude, ChatGPT, Gemini, Codex): humanize beats perplexity-based detectors, ai-check produces forensic scoring with evidence-quoted flags. Nine levers, 50+ peer-reviewed sources, 2024-2026 detection literature. GitHub - StackOneHQ/stack-nudge GitHub - nodes-app/swift-markdown-engine: A native AppKit Markdown editor for macOS, built on TextKit 2 and bridged to SwiftUI. We hardened an LLM agent. Each defense we added made it more exploitable. GitHub - alkait/WhatsKept: Agent-queryable WhatsApp history from an iOS backup — a single Go binary. GitHub - octelium/cordium: Open-source, general-purpose sandbox platform for devs and AI agents that provides identity-based secure access to infrastructure without credentials. WAR.GOV/UFO Microfilm5 GitHub - scosman/videowright: Build animated explainer videos with your coding agent GitHub - dipankar/dscode: The code editor you can take apart. GitHub - zoharbabin/web-researcher-mcp: MCP server (Go) for AI assistants: web search, content extraction, academic/patent/news research. Multi-provider routing, 4-tier scraping, search lenses. Works with Claude, Cursor, and any MCP client. GitHub - ruvnet/RuView: π RuView turns commodity WiFi signals into real-time spatial intelligence, vital sign monitoring, and presence detection — all without a single pixel of video. GitHub - scanaislop/aislop: Catch the slop AI coding agents leave in your code: narrative comments, swallowed exceptions, as-any casts, dead code, oversized functions. 50+ rules across 7 languages (TypeScript, JavaScript, Python, Go, Rust, Ruby, PHP). Sub-second, deterministic, no LLM at runtime. MIT-licensed. GitHub - kouhxp/cheap-im: CPU-only voice agent approximating Thinking Machines' Interaction Models demo GitHub - unprovable/OrchidMantis: Orchid Mantis — standalone framework for Zero-Knowledge Proofs of eXploit (ZKPoX). GitHub - MarcellM01/TinySearch: Shrink the web for your local LLMs! GitHub - TangibleResearch/Halgorithem: A Algo designed to detect AI Hallucitions GitHub - DO-SAY-GO/freelang: I love freelang GitHub - CarpseDeam/Aura-IDE: An AI coding harness that shaped itself - Planner/Worker agents, repo awareness, surgical edits, validation, recovery, and safe diff approvals. GitHub - chojs23/concord: A feature-rich TUI client for Discord GitHub - tommyjepsen/awesome-ux-skills: UX & AI Product designs skills you can use today in Claude Code GitHub - aerf-spec/aerf: Agent Evidence Receipt Format (AERF) — an open specification for tamper-evident, independently verifiable records of AI agent actions. GitHub - kklimuk/docx-cli: CLI for AI agents (Claude, Codex) to read, edit, and comment on .docx files with full format fidelity. GitHub - Jwrede/tokentoll: Catch LLM cost changes in code review. Infracost for LLM spend. GitHub - samchon/ttsc: A `typescript-go` toolchain for compiler-powered plugins and type-safe execution + 500x faster lint integrated into compiler GitHub - Higangssh/homebutler: 🏠 Manage your homelab from chat. Single binary, zero dependencies. GitHub - olalie/tapmap: See where your computer connects and what stands out on a live world map. GitHub - Diplomat-ai/diplomat-agent: What can your AI agent do to the real world? Scan your code. See which tool calls have zero checks GitHub - Bajusz15/beacon: Open-source agent for secure remote access, monitoring, and deploys across home-lab and self-hosted machines like Raspberry Pi, N100, or any Linux server. Open web based TTY or tunnel Home Assistant and other local services securely without opening ports. BigTech AI News - Chrome 应用商店 GitHub - vinhnx/VTCode: VT Code is an open-source coding agent with LLM-native code understanding and robust shell safety. Supports multiple LLM providers with automatic failover and efficient context management. GitHub - michaelaz774/decision-engine: A decision operating system for startup founders, powered by Claude Code. Synthesizes wisdom from 25+ legendary founders and investors into interactive AI-driven decision frameworks. GitHub - Chrilleweb/dotenv-diff: Validate environment variable usage in your codebase GitHub - Lumen-Labs/brainapi2: BrainAPI is a knowledge graph–powered AI memory layer that transforms unstructured data into structured knowledge, enabling intelligent search, recommendations, and contextual memory for AI agents and applications. GitHub - familiar-software/familiar: Let AI watch you work. Familiar lets your AI update its memory, skills, and knowledge by watching your screen. GitHub - skorotkiewicz/rudo: A small, elegant dock for Wayland GitHub - muxshed/shed: One stream in, or many. Every destination, simultaneously. No cloud middleman, no per-channel fees, no limits. make sidebar/address bar rounded corner toggleable
GitHub - BrugolaOvoidale/Visical: A cross-platform tool for camera calibration.
BrugolaOvoid · 2026-06-15 · via Show HN

A cross-platform C++ application for camera calibration with modular quality evaluation and multi-source image acquisition.


Introduction • Features • Installation • Quick Start • Architecture • License

C++ OpenCV wxWidgets Platform

Introduction

Visical is a cross-platform camera calibration tool built with OpenCV and wxWidgets. It combines a OpenCV-driven calibration pipeline with a non-blocking evaluation framework, where calibration can proceed even if individual evaluations fail. In this design, OpenCV remains the authoritative source of the process, while evaluation acts as an independent, quality-assessment layer.

Features

  • Multi-source acquisition - load images from disk, capture from webcams, or connect to GigE/USB3 Vision cameras via Aravis.
  • Full calibration pipeline - OpenCV-driven board detection, pose estimation, and camera optimization in a single workflow.
    • Supports single-camera calibration. Stereo and multi-camera setups are currently out of scope.
    • Supports chessboard and circles grid patterns.
  • Modular evaluation framework - independent quality plugins assess boards and calibration results. Plugins are independently enabled, disabled, configured, and persisted as JSON; covers individual boards, board sequence, and final calibration metrics
  • Cross-platform - runs on Linux and Windows, built with C++23, CMake, and vcpkg

Installation

Quick Installation (Recommended)

Prebuilt binaries are available for supported platforms through the GitHub Releases page.

  1. Open the repository's Releases page.
  2. Download the latest package for your platform.
  3. Extract the archive.
  4. Launch Visical.

No compilation or dependency installation is required.

Build from Source (Advanced)

This project uses CMake as its build system, with configuration managed through CMakePresets.json. Dependencies are handled via vcpkg, defined in vcpkg.json.

The project is primarily developed and tested with Clang, but other C++ compilers may work with minimal adjustments.


Prerequisites

Before building, ensure you have the following installed:

  • CMake (≥ 3.20 recommended)
  • Clang (or another C++23-compatible compiler)
  • Git
  • vcpkg

Setup vcpkg

If vcpkg is not already installed:

git clone https://github.com/microsoft/vcpkg.git
cd vcpkg
./bootstrap-vcpkg.sh   # Linux
.bootstrap-vcpkg.bat   # Windows

Make sure that environment variable VCPKG_ROOT is correctly set.


Clone the Repository

git clone https://github.com/BrugolaOvoidale/Visical.git
cd Visical

Install Dependencies

Dependencies are automatically resolved via vcpkg.json during CMake configuration.


Configure & Build

Using CMake presets (recommended):

cmake --preset <preset-name>
cmake --build --preset <preset-name>

To list available presets:

Alternatively, you can configure manually:

cmake -S . -B build -DCMAKE_TOOLCHAIN_FILE=<path-to-vcpkg>/scripts/buildsystems/vcpkg.cmake
cmake --build build

Notes

On Linux, vcpkg may not be able to install all third-party dependencies automatically. If this happens, install the missing dependencies manually. Check the CMake configuration output for details.


Quick Start

Before starting, make sure your calibration board is properly printed and mounted. Refer to the official OpenCV guide: Create Calibration Pattern. Mount it rigidly on a flat surface before acquisition.

  • Configure - on the Setup page, set the image size in pixels ("Camera intrinsics" box). Then navigate to the Detection page → Setup sub-page, choose the image source, and set the board parameters ("Detection parameters" box).
  • Detect - navigate to the Detection sub-page and load images using the folder icon. The app will display images on the left and detection and evaluation results on the right.

  • Evaluate - quality assessments per board and per sequence are also displayed.

  • Calibrate - once satisfied with the dataset, click "Accept dataset": Visical will automatically move to the Calibration page, run the calibration, and return the camera parameters, evaluation results, and the option to see the images undistorted.

  • Save - export the calibration result to a JSON file using the save button on the left.

Example of a calibration result in a JSON file:

{
    "camera": {
        "focal_length_x": 3778.998517383195,
        "focal_length_y": 3795.4120564419795,
        "principal_point_x": 550.0582420918876,
        "principal_point_y": 648.8049607977425
    },
    "distortion_model": {
        "standard": {
            "k1": -0.39599703363377464,
            "k2": 1.044774916481398,
            "p1": 0.0007796825585351178,
            "p2": 0.0009423617956795151,
            "k3": -9.679592041202422
        }
    },
    "cameraModel": {
        "reprojectionError": 0.14116148019896574
    }
}

Architecture

Visical is organized into four layers:

  • Acquisition: where images are loaded or grabbed, ready to be analyzed by the board detector.
  • Detection: where OpenCV will try to find board on images and estimate their pose.
  • Calibration: where OpenCV will optimize the camera using detected boards.
  • Evaluation: runs along both Detection and Calibration layers, evaluating quality of detected boards and calibration results. It behaves as a non-authoritative guide, giving only advice to get a good calibration, but does not block it, even if evaluations fails.

Acquisition Layer

Visical supports two image acquisition modes:

  • Disk loading - import existing images from the filesystem for offline calibration workflows.
  • Live camera capture - acquire images directly from hardware:
    • GenICam-compliant cameras via Aravis.
    • Webcams via OpenCV's VideoCapture interface.

Detection Layer

During detection, OpenCV will try to find a board on image and estimate its pose. The Visical system will store all detection result (found or not), to allow re-detection or re-evaluation.

Calibration Layer

After collecting a dataset of boards, Visical will run calibration using only detected board. This is the only constraint by OpenCV, boards with failed evaluation are still used.

Evaluation Framework

Quality evaluation is organized around a set of modular, composable plugins that can assess:

  • Single detected board - evaluates the geometric quality of an individual detected calibration board.
  • Detected board sequence - assesses the collected board set as a whole.
  • Single calibrated board - inspects each board's contribution to the final calibration result.
  • Calibration result - evaluates the calibration outcome through reprojection errors and related metrics.

Each plugin is independent and can be enabled, disabled, configured and saved in JSON files. The evaluation system is intentionally decoupled from the calibration pipeline, in order to keep OpenCV as the only authoritative source of the calibration process.

Examples

The Constrast check calculates contrast metrics to ensure that markers are sufficiently distinguishable from the background.

The FOV Coverage check analyzes the board sequence to determine if the detected points sufficiently cover the Field of View (FOV).


Contributing

Feedback and bug reports are very welcome.

Reporting Issues

If you encounter a bug or unexpected behavior, please open an issue and include:

  • A clear description of the problem
  • Steps to reproduce it
  • Your platform (Linux / Windows) and compiler version
  • Any relevant error output or screenshots

Pull Requests

If you'd like to contribute code, please open an issue first to discuss the change. This avoids wasted effort on PRs that may not align with the project's direction.


Limitations & Roadmap

Visical is actively developed but currently scoped to a specific set of use cases. The following lists what is not yet supported and what may be addressed in the future.

Current Limitations

  • Single-camera only — stereo and multi-camera calibration setups are not supported. Each calibration session produces intrinsics for one camera.
  • Chessboard and circles grid only — ArUco markers, ChArUco boards, and other OpenCV-supported patterns are not yet available in the detection pipeline.

Possible Future Directions

These are not commitments — just honest candidates for future work based on current gaps:

  • Stereo calibration — extending the pipeline to support camera pairs and extrinsic estimation between them.
  • Additional board patterns — ArUco and ChArUco support in particular, since they are more robust under partial occlusion and in low-texture scenes.

Contributions addressing any of the above are welcome. See Contributing.


License

This project is licensed under the Apache License 2.0.

You may use, distribute, and modify this software under the terms of the Apache 2.0 license. See the LICENSE file for the full license text.