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AIOZ Network

AIOZ Network is a DePIN for Web3 AI, Storage, and Streaming. AIOZ empowers a fast, secure, and decentralized future.

Company

AI & ML interests

Machine Learning, Computer Vision, Federated Learning

Models
12

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Image Blending with Multiple Methods
Image Blending with Multiple Methods is a task that involves combining two or more images seamlessly to create a composite image using a variety of blending techniques. By leveraging multiple blending methods, such as alpha blending, gradient blending, or Laplacian pyramid blending, this task enables the merging of images while preserving the visual coherence and integrity of the final composition.
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Image Super-Resolution with SeemoRe
Image Super-Resolution with SeemoRe is a task aimed at improving the process of image super-resolution by leveraging expertise in the field. This task involves incorporating techniques that identify and utilize expert knowledge or specialized information to enhance the efficiency and accuracy of image upscaling.
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Image Super-Resolution with SMFANet
Image Super-Resolution with SMFANet involves utilizing the SMFANet model architecture to enhance the resolution and quality of images. SMFANet is a deep learning network designed for super-resolution tasks, aiming to generate high-quality, detailed images from low-resolution inputs.
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Semantic-Guided Low-Light Network Enhancement
Semantic-Guided Low-Light Network is a task that integrates semantic information into the process of enhancing the quality of images captured in low-light conditions. By incorporating semantic guidance, this task aims to improve the accuracy and effectiveness of enhancing low-light images by considering the context and content of the scene.
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Low-light Image Enhancement
Low light Image Enhancement is a task focused on improving the quality and visibility of images captured in low-light conditions. This task involves applying image processing techniques and algorithms to enhance details, reduce noise, and increase brightness in photos taken in dimly lit environments.
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Image to Anime
The goal of Image to Anime was to create a new version of the image that would possess the same clean lines and evoke the characteristic feel found in anime productions, capturing the unique artistry, and aesthetics associated with this style.
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MediaPipe Face Detection
Face detection is a computer vision technique that involves identifying and locating human faces within an image or video. The goal of face detection is to detect the presence of faces, and draw bounding boxes around them, without necessarily identifying specific facial features or landmarks.
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MediaPipe Face Mesh Ploting
Face mesh detection, also known as facial landmark detection or face pose estimation, is the task of identifying and localizing specific keypoints or landmarks on a human face. It involves detecting the positions of facial features, such as eyes, eyebrows, nose, mouth, and jawline, in an image or video.
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Video to Canny Edge
Video to Canny Edge is the process of converting a video into a Canny edge representation, where edges in the video are emphasized and separated. Canny Edge is a popular algorithm in image processing and is often used to detect edges in images and videos.
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Color Extraction
Color Extraction is a task in computer vision that involves the extraction and analysis of colors from images or videos. The objective of this task is to identify and isolate specific colors, or color ranges present in the visual data.
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Datasets
10

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XQuAD
This dataset is a great resource for researchers who want to evaluate cross-lingual question answering performance.
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CommonGen
Building machines with commonsense to compose realistically plausible sentences is challenging. CommonGen is a constrained text generation task, associated with a benchmark dataset, to explicitly test machines for the ability of generative commonsense reasoning. Given a set of common concepts; the task is to generate a coherent sentence describing an everyday sce- nario using these concepts.
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BLiMP
The Benchmark of Linguistic Minimal Pairs, a challenge set for evaluating the linguistic knowledge of language models (LMs) on major grammatical phenomena in English, finds that state-of-the-art models identify morphological contrasts related to agreement reliably, but they struggle with some subtle semantic and syntactic phenomena.
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TAL-SCQ5K
TAL-SCQ5K are high-quality mathematical competition datasets created by TAL Education Group.
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X-CSR
To create these datasets, the authors automatically translated the original CSQA and CODAH datasets, originally available only in English, into 15 other languages.
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