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Amirkabir University(AUT)
- Tehran
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16:20
(UTC +03:30) - seyed07.github.io
- https://orcid.org/0009-0007-6572-6688
- in/seyed-ahmad-hosseini-62a85730a
- https://scholar.google.com/citations?user=U-onmDsAAAAJ&hl=en
Pinned Loading
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Autonomous-Driving-via-Hybrid-Learning-and-Diffusion-Planning
Autonomous-Driving-via-Hybrid-Learning-and-Diffusion-Planning PublicIRL-DAL (Inverse Reinforcement Learning with a Diffusion-based Adaptive Lookahead planner) presents a robust framework for autonomous driving that addresses the safety and stability limitations of …
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Amin-A96/BLIP-FusePPO-A-Vision-Language-Deep-Reinforcement-Learning-Framework-for-Lane-Keeping-in-Autonomous
Amin-A96/BLIP-FusePPO-A-Vision-Language-Deep-Reinforcement-Learning-Framework-for-Lane-Keeping-in-Autonomous PublicBLIP-FusePPO for lane keeping
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Speech-Emotion-Recognition-using-Wav2Vec2
Speech-Emotion-Recognition-using-Wav2Vec2 PublicA deep learning-based Speech Emotion Recognition (SER) system leveraging Wav2Vec2 and a combination of popular emotional speech datasets. Detects emotions like happy, sad, angry, and more from raw …
Jupyter Notebook 2
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ResNetInception-CNN-Classifier-For-TinyImageNetDataset
ResNetInception-CNN-Classifier-For-TinyImageNetDataset PublicForked from ArminSLM/ResNetInception-CNN-Classifier-For-TinyImageNetDataset
CNN-based image classification using a ResNet-Inception hybrid model on the TinyImageNet dataset, including extensive hyperparameter tuning and performance comparison
Jupyter Notebook 1
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Twitter-Emotion-Classifier-using-Transformer-Encoder
Twitter-Emotion-Classifier-using-Transformer-Encoder Public"A Transformer-based deep learning model for advanced emotion detection in tweets — combining powerful GloVe embeddings with custom text preprocessing for high accuracy classification."
Jupyter Notebook 2
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MNIST-Deep-Learning-Saliency-Maps-and-FGSM-Attacks
MNIST-Deep-Learning-Saliency-Maps-and-FGSM-Attacks PublicDeep learning project for MNIST digit classification with model training, saliency map visualization, and robustness evaluation using FGSM adversarial attacks.
Jupyter Notebook 2
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