13 Repos
Generates new image content based on the visual characteristics and structure of a provided example image.
Distinguishing note: None of the candidates cover using a reference image to guide the visual characteristics of generative object replacement.
Explore 13 awesome GitHub repositories matching artificial intelligence & ml · Example-Based Image Generation. Refine with filters or upvote what's useful.
IOPaint is an AI image editor and Stable Diffusion inpainting tool providing a web interface for removing objects and replacing image content. It utilizes latent diffusion image processing to synthesize high-resolution replacements for erased sections of an image. The project features a specialized AI background remover for isolating subjects and an AI image upscaler that employs super-resolution models for general photos and anime artwork. The software covers a broad range of capabilities including image segmentation for object isolation, face restoration for improving facial details, and t
Generates new image content based on the visual characteristics of a provided example image.
Neural Doodle is a collection of neural network tools designed for image upscaling, texture synthesis, and semantic-guided style transfer between visual inputs. It provides a semantic style transfer engine and an example-based image upscaler that increase image resolution by referencing visual details from a target style example. The project includes a neural texture synthesizer for creating seamless bitmap textures and repeating patterns from a single input style image. It also functions as an image generation tool capable of transforming simple sketches and photos into detailed artwork. Th
Provides a neural network implementation that increases image resolution by referencing visual details from a target style example.
BasicSR is a PyTorch-based image restoration toolbox and framework designed for training and deploying deep learning models to upscale, denoise, and deblur images and videos. It serves as a comprehensive system for image super-resolution and video quality restoration, providing the necessary infrastructure to recover fine visual details and increase pixel density. The project distinguishes itself through specialized toolkits for facial image enhancement and high-fidelity face synthesis, as well as a dedicated video quality restoration suite that utilizes deformable convolutions and generative
Increases image resolution by synthesizing high-frequency details using neural network architectures.
Dream Textures is a Stable Diffusion integration for Blender that provides tools for text-to-image generation, depth projection, and node-based processing within a 3D environment. It functions as an AI texture generator capable of producing image textures and concept art from text prompts and scene renders. The system features a depth-to-image projection tool that maps generated imagery onto 3D models using depth data for spatial alignment. It also includes a node-based AI image processor for creating procedural visual effects and a dedicated toolset for AI-assisted inpainting and outpainting
Increases the resolution of low-fidelity generated images by synthesizing high-frequency details.
imaginAIry is a system for generating and refining images and videos using diffusion models. It operates as a web-based server that triggers generation requests through standard API calls, allowing for the creation of visuals and video sequences from text prompts or existing files. The project provides a suite for AI image editing and upscaling, enabling the modification of visuals through natural language instructions and super-resolution tools to increase detail and image size. The system includes capabilities for structural image control using depth maps, edge maps, and body poses to main
Increases pixel density by passing low-resolution outputs through specialized neural networks to recover high-frequency details.
mmagic is a multimodal training pipeline and framework for generative AI, focusing on visual synthesis and restoration. It provides the infrastructure to build and train models for tasks such as text-to-image and text-to-video generation, 3D-aware content synthesis, and high-fidelity image translation using diffusion models and generative adversarial networks. The project distinguishes itself through specialized capabilities for generative model personalization, including techniques for fine-tuning subjects and styles. It also supports advanced visual manipulations such as latent space interp
Increases the resolution of images by synthesizing high-frequency details for classical and real-world scenarios.
Civitai is a platform for generative media creation and AI model distribution. It provides a centralized service for producing images, videos, audio, and music, while serving as a repository where users can share, discover, and browse custom model weights and fine-tuned adaptations. The platform distinguishes itself through a provider-agnostic orchestration layer that manages multi-step generation pipelines and complex workflows across different backends. It integrates with autonomous AI agents and editors via the Model Context Protocol, allowing external tools to access generation pipelines
Increases the resolution of images by synthesizing high-frequency details using specialized upscalers.
StableCascade is a generative AI system and latent diffusion framework designed for text-to-image synthesis and image-to-image transformations. It utilizes a multi-stage cascade architecture that encodes and decodes images via a latent space to produce high-fidelity visual imagery. The system includes a cascade diffusion pipeline for controlling image structure through inpainting, outpainting, and super-resolution. It also provides a toolkit for image-to-image generation and the creation of image variations using embeddings. The framework supports model optimization through low-rank adaptati
Employs super-resolution and decoding techniques to increase the quality and dimensions of generated imagery.
ESRGAN is a deep learning image restoration framework designed for image super-resolution. It uses a generative adversarial network system to upscale low-resolution images into high-quality versions with sharp visual details and recovered fine textures. The framework implements a perceptual super-resolution model that optimizes the trade-off between perceived visual quality and pixel-level signal-to-noise ratio. It includes weight-interpolation blending to allow for the adjustment of visual sharpness and signal-to-noise ratios by mixing weights from different trained models. The system cover
Offers a PyTorch-based toolkit for training and deploying neural networks that increase image resolution.
A free and open-source inpainting & image-upscaling tool powered by webgpu and wasm on the browser。| 基于 Webgpu 技术和 wasm 技术的免费开源 inpainting & image-upscaling 工具, 纯浏览器端实现。
Increases the resolution of an image to make it sharper and more detailed, running entirely in the browser.
Clarity-upscaler ist ein KI-Tool zur Bildskalierung und -verbesserung, das Deep-Learning-Modelle nutzt, um die Bildauflösung zu erhöhen und visuelle Details wiederherzustellen. Es fungiert als Inference-Engine für Super-Resolution, die neuronale Netze einsetzt, um fehlende Pixel vorherzusagen und hochfrequente Details aus niedrig aufgelösten Quellen zu synthetisieren. Das Projekt wird als programmierbare API bereitgestellt, die die Integration automatisierter, hochauflösender Bildverarbeitung und Schärfung in externe Anwendungen und Workflows ermöglicht. Diese Schnittstelle erlaubt das programmatische Hochskalieren von Bildern zur Erstellung hochauflösender Assets. Das System bietet Funktionen zur automatisierten Bildverbesserung, entfernt Rauschen und verbessert die Klarheit, um schärfere Versionen qualitativ minderwertiger Bilder zu erzeugen. Es bewältigt diese Aufgaben durch eine entkoppelte Client-Server-Architektur, die die rechenintensive Machine-Learning-Inferenz verwaltet.
Provides a programmable interface to increase image resolution and deliver visual enhancements to external applications.
Dieses auf PyTorch basierende Tool zur Bild-Super-Resolution bietet eine Deep-Learning-Pipeline für das Upscaling niedrig aufgelöster Bilder. Es nutzt generative gegnerische Netzwerke (GANs), um die Pixeldichte zu erhöhen und hochauflösende Bilddetails zu rekonstruieren. Das System enthält einen GAN-basierten Bild-Upscaler und eine Trainings-Pipeline, die neuronale Netzwerkgewichte mithilfe gepaarter Datensätze und benutzerdefinierter Verlustfunktionen optimiert. Um Hardware-Ressourcen zu verwalten, teilt ein patch-basierter Bildprozessor hochauflösende Dateien in kleinere Segmente auf, um Speicherzuweisungsfehler und Systemabstürze zu verhindern. Zusätzliche Funktionen umfassen die Anwendung vortrainierter Modellgewichte zur Rauschunterdrückung sowie einen Monitor für das Training neuronaler Netze, der Performance-Metriken und Log-Dateien über ein Dashboard visualisiert.
Increases image resolution by synthesizing high-frequency details from reference samples via GANs.
Deep-daze ist ein neuronales, steuerbares Bildgenerierungs- und Text-zu-Bild-Synthese-Tool. Es fungiert als Bild-zu-Bild-Interpretations-Engine und Bildgenerator, der Text-Prompts und Bild-Seeds in visuelle Repräsentationen umwandelt. Das System unterstützt die Visualisierung längerer Texte, indem es Standard-Token-Limits umgeht, um erweiterte Erzählungen oder Gedichte zu verarbeiten. Es bietet zudem bildgestütztes Prompting, wodurch das Netzwerk mit einem Startbild initialisiert werden kann, bevor die Textsteuerung angewendet wird. Das Framework nutzt neuronale Netzwerkoptimierung und iterativen Gradientenabstieg, um die Bildqualität zu verfeinern. Es verwendet Multi-Goal-Optimierung, um Textsteuerung und bildbasierte Ziele innerhalb einer einzigen Verlustfunktion auszubalancieren.
Uses a provided image to guide the visual characteristics and structure of the generated output.