Questions tagged [transfer-learning]

For questions related to transfer learning, a machine learning method that focuses on storing knowledge gained while solving one problem in order to apply this knowledge to a different but related problem.

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How can I improve the performance of a model trained to detect vehicle poses?

I'm looking for some suggestions on how to improve our vehicle image recognition. We have an online marketplace where customers submit photos of their vehicles. The photos need to meet certain ...
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Why shouldn't batch normalisation layers be learnable during fine-tuning?

I have been reading this TensorFlow tutorial on transfer learning, where they unfroze the whole model and then they say: When you unfreeze a model that contains ...
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What is the difference between "out-of-distribution (generalisation)" and "(meta)-transfer learning"?

I'm trying to develop a better understanding of the concept of "out-of-distribution" (generalization) in the context of Bengio's "Moving from System 1 DL to System 2 DL" and the concept of "(meta)-...
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Training a reinforcement learning model with multiple images

I am tentatively trying to train a deep reinforcement learning model the maze escaping task, and each time it takes one image as the input (e.g., a different "maze"). Suppose I have about $10K$ ...
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1answer
53 views

How could Bayesian neural networks be used for transfer learning?

In transfer learning, we use big data from similar tasks to learn the parameters of a neural network, and then fine-tune the neural network on our own task that has little data available for it. Here, ...
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Literature on the advantages of using an auto-encoder for classification

Given a supervised problem with X, y input pairs, one can do two things for obtaining the function f that maps X with y with Neural Networks (and in general in machine learning): Deploy directly a ...
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31 views

Is it ok to perform transfer learning with a base model for face recognition to perform one-shot learning for object classification?

I am trying to create a model that is using a one-shot learning approach for a classification task. We do this because we do not have a lot of data and it also seems like a good way to learn this ...
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504 views

Why aren't the BERT layers frozen during fine-tuning tasks?

During transfer learning in computer vision, I've seen that the layers of the base model are frozen if the images aren't too different from the model on which the base model is trained on. However, on ...
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1answer
112 views

What's the difference between domain randomization and domain adaptation?

In my understanding, domain randomization is one method of diversifying the dataset to achieve a better shot at domain adaptation. Am I wrong?
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1answer
166 views

Does self-supervised learning require auxiliary tasks?

Self-supervised learning algorithms provide labels automatically. But, it is not clear what else is required for an algorithm to fall under the category "self-supervised": Some say, self-...
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140 views

What is the difference between using a backbone architecture and transfer learning?

I'm super new to deep learning and computer vision, so this question may sound dumb. In this link (https://github.com/GeorgeSeif/Semantic-Segmentation-Suite), there are pre-trained models (e.g., ...
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1answer
73 views

Is my fine-tuned model learning anything at all?

I am practicing with Resnet50 fine-tuning for a binary classification task. Here is my code snippet. ...
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How to transfer learn Darknet YOLOv3

I've started getting into object detection in image. I have YOLOv3 neural network with Darknet framework. The network is pre-trained from COCO data set. Now I need to do some transfer learning in ...
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Paper & code for "unsupervised domain adaptation" for regression task

Does anyone know a paper or code that does "unsupervised domain adaptation" for regression task? I saw most of the papers were benchmarked on classification tasks, not regression. I want to do ...
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14 views

Transferring a Q-learning policy to larger instances

How do I best transfer and fine-tune a Q-learning policy that was trained on small instances to large instances? Some more details on the problem: I am currently trying to derive a decision policy for ...
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10 views

Continue teaching pre-trained network without forgetting previous data set

I have a rather interesting problem here; I work in the field of image classification for quality assurance. For this I have a dataset of about 1 million images, which I have used to train different ...
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26 views

How to deal with images that do not contain any object of interest?

I'm currently working on an iOS App where I want to detect if there is a table, chair or bench in the current camera input. My idea was to take the MobileNetV2 model and get it to classify these three ...
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36 views

What is the definition of pre-training?

I want to pre-train a model (combined by two popular modules A and B, and both are large blocks), then fine-tune it on downstream tasks. What if for the weight initialization for pre-training, module ...
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Why is domain adaptation and generative modelling for knowledge graphs still not applied widely in enterprise data? What are the challenges?

I see that domain adaptation and transfer learning has been widely adopted in image classification and semantic segmentation analysis. But it's still lacking in providing solutions to enterprise data, ...
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Reference for Transfer Learning via Final Layers of a Neural Network

Problem (Sketch): I'm interested in a particular formulation of the transfer-learning problem, which, given a trained network $f$ seeks to learn a new network $g$ whose last few layers behave very ...
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28 views

Is the high dimensionality of input vectors a problem for a radial basis function neural network?

I have a dataset A of videos. I've extracted the feature vector of each video (with a convolutional neural network, via transfer learning) creating a dataset B. Now, every vector of the dataset B has ...
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202 views

What are the actual math or computer science concepts behind these unfamiliar hyperparameters in the Deep Dream Generator's Deep Style?

I've been playing around with neural style transfer for a about a year now, and I've been doing it with two general approaches. The first has been using a script that is available on the Keras GitHub, ...
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615 views

Reasoning behind $Zero$ validation accuracy in the following ResNet50 model for classification

I have written this code to classify Cats and dogs using Resnet50. Actually while studying I came to the conclusion that Transfer learning gives very good accuracy for deep learning models, but I ...
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learning object recognition of primitive shapes through transfer learning problem

Question on transfer learning object classification (MobileNet_v2 with 75% number of parameters) with my own synthetic data: I made my own dataset of three shapes: triangles, rectangles and spheres. ...
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58 views

Is convergence to a local minima more likely with transfer learning?

While doing transfer learning where my two problems are face-generation and car-generation is it likely that, if I use the weights of one problem as the initialization of the weights for the other ...
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17 views

Binary annotations on large, heterogenous images

I'm working on a deep learning project and have encountered a problem. The images that I'm using are very large and extremely detailed. They also contain a huge amount of necessary visual information, ...
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16 views

Without using data augmentation gives results better than using data augmentation

I am a beginner to deep learning, I'm doing the image classification problem on a small self plant disease imaging dataset (400 images). I am doing transfer learning (pre-trained ...
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26 views

How big should the dataset for retraining ssd_mobilenet_v2 be?

I have retrained ssd_mobilenet_v2 using my own dataset with 2 classes (pen or pencil), using object detection API. For my project, I expect users to select specific pencils from all pencils and ...
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16 views

What is meant by "training a YOLOv5 on custom dataset"?

I am new to AI/CV domain. I see a lot of tutorials on "training a YOLOv5 on custom dataset". As per my knowledge, Basically, YOLO is a giant neural network trained on a particular set of ...
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14 views

How to calculate computational efficiency of Deep Learning Models?

I am trying to make a comparison between two simple 5 layer neural network models. One of the models has 3 frozen layers as I've implemented transfer learning in that architecture. The other is ...
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29 views

Model not learning anything, what can be the problem?

I've trained a model for heart sound classification with transfer learning (MobileNet) on Physionet dataset, and it works fine. However, when I train it on my own dataset, it seems that it can not ...
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24 views

How to work deeper with YOLO v4 scaled

I am pretty new in object detection. When I did some classification using TF with pretrained models I changed some last layers and choosed how many layers I want to train. I don't really get it with ...
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16 views

Naming convention for deep learning layer sequences ("FC7", "Conv-1-3")

I was looking at the deep learning paper A Target-agnostic Attack on Deep Models and saw this figure (figure 3 on paper) demonstrating the performance of a transfer-learning-based adversarial attack ...
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Can I use transfer learning with Bert and none text sequential data?

I'm working on a multiclass classification problem, each row on my dataset have 5 time windows with 23 values on each time window, I would like to use transfer learning using the Bert transformer to ...
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1answer
39 views

Validation accuracy very low with transfer learning

I am using MobileNetV3 from TF keras for doing transfer learning; I removed the last layer, added two dense layers, and trained for 20 epochs. How many dense layers should I add after the MobileNet ...
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36 views

Anything similar to BERT but for pixel-wise embedding in images

In NLP there is BERT which can take a sentence and turn it into an embedding (vector representation) which in some ways encompasses the "meaning" or more precisely the context of the ...
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185 views

What could be a good way to visualise the feature extraction process with MobileNet?

I am trying to create a visualisation for how transfer learning (feature extraction in particular) works with MobileNet. With the ml5.js library, you can extract a ...
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20 views

Multi-objective training vs Transfer learning - pros and cons

I'm solving a sequential prediction task that has multiple features attached to each timestamp, and my goal is to predict one of them. However, the feature's label is highly imbalanced: only about 4% ...
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1answer
141 views

What is the difference between feature extraction and fine-tuning in transfer learning?

I'm building a model for facial expression recognition, and I want to use transfer learning. From what I understand, there are different steps to do it. The first is the feature extraction and the ...