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Awesome-Multimodal-LLM-Autonomous-Driving
[WACV 2024 Survey Paper] Multimodal Large Language Models for Autonomous Drivinglanenet-lane-detection-pytorch
Unofficial implemention of lanenet model for real time lane detection Pytorch Versionwaymo_to_semanticKITTI
Convert waymo open dataset 3D segmentation format to SemanticKITTI format.ViTASD
Official Implementation of ViTASD: Robust Vision Transformer Baselines for Autism Spectrum Disorder Facial DiagnosisChromosome_Classification_Deep_Learning_Method
It is a project based on IJCNN's paper Automatic Chromosome Classification using Deep Attention Based Sequence Learning of Chromosome Bands and process some new methodsGomoku-XYH19
A AI project about GomokuVCog-Bench
What is the Visual Cognition Gap between Humans and Multimodal LLMs?MAE-ViT-pytorch
MAE-ViT-pytorch, structure is based on https://github.com/rwightman/pytorch-image-modelscontour-aware-Unet
The realization of different classes of Unet framework including contour-aware-Unet, DCAN, Dual Unet, Attention Unet, Unet++MVLM-PyTorch
Crossing_Aggregation_Network
It is a U-Net based network which absorb ideas from deep aggregation layers(DLA), Unet++, ET-Net......TRN-pytorch-Temporal-Relational-Reasoning-in-Videos
Implementation for Temporal Relational Reasoning in Videos. This is a NYU course project for DS-GA 3001.004/.005 Introduction to Computer Vision (Spring 2021)SEC-UNET_SEMANTIC_EMBEDDING_AND_CONTOUR_ASSIST_UNET_FOR_BACTERIA_SEGMENTATION-AND-DETECTION
The number of bacterial types is a critical monitoring indicator for indoor air quality standards. It is a challenging task to cultivate and count colonies of bacteria which is expertise required and time-consuming. In this work, we investigate several U-Net improvement approaches. We are motivated by the assumption that contour information and semantic embedding branch can enhance U-Net's segmentation capacity for blurred and overlapping objects. Therefore, we propose Semantic Embedding and Contour Assist U-Net (SEC-U-Net) for direct bacteria segmentation and a shallow CNN for bacteria classification. This algorithm designed the detection of bacteria as a two-stage segmentation and classification task. Experimental results demonstrate the proposed method outperforms the state-of-the-art improved U-Net approaches on our bacteria dataset. Proposed SEC-U-NET+CNN based training presented over 91% and 85% precision rate for E.coli and S.aureus, respectively.IrohXu
A-miniature-relational-database-with-order
NYU Courant Database Systems, CSCI-GA.2433-011 Course Project Assignmentirohxu.github.io
github.io for Iroh CaoChromosome_Segmentation_U-Net
It is a U-Net based project to handle the chromosome segmentation problemLove Open Source and this site? Check out how you can help us