Skip to main content

All Questions

Filter by
Sorted by
Tagged with
0 votes
0 answers
65 views

How to train a model to make predictions for larger sequences than those in the dataset?

I'm working on a project where I need my model to predict a sequence of n 3x3 matrices given an input sequence of n 3x3 matrices ...
Awwab Azam's user avatar
0 votes
0 answers
26 views

Why isn't my CNN-RNN model learning despite the CNN performing well?

I'm working on a model that combines a CNN with an LSTM to process sequences of spectrograms and make per-time-step predictions. The CNN alone performs well on the task, but after adding an LSTM for ...
Leonardo Garofalo's user avatar
2 votes
1 answer
64 views

Distinguishing between the fundamental structures of the convolutional neural network and the recurrent neural network: hierarchical vs sequential

I'm trying to distinguish between the fundamental structures of the convolutional neural network and the recurrent neural network. Convolutional neural networks build a hierarchical model from the ...
The Pointer's user avatar
0 votes
0 answers
70 views

Is my 1D signal using CNN & RNN regression reasonable?

I want to know if my impact-echo signals are proper with CNN or RNN regression model. I got some simulated signal, as following shows. In previous research, people mostly consider frequency or even ...
hui30319's user avatar
0 votes
1 answer
44 views

Temporally Non-Aware RNN

I am trying to classify whether or not a specific object is in panoramic photos. The issue is, a panoramic photo can be any width, so the input to my neural network can't be fixed in that dimension. I'...
user avatar
1 vote
1 answer
44 views

How to deal with varying number of input images?

Im trying to use Deep-Learning to recognize breast cancer on Mammography Images. But in the dataset every patient has a different (1-4) number of images taken. How can i deal with that? Generally i ...
Patrick G Patrick's user avatar
0 votes
1 answer
94 views

What underlying network is typically meant with ResNET?

When people talk about a ResNet architecture, they are talking about a neural network architecture with skip connections. But what basis network are they typically referring to? Feedforward-networks ...
postnubilaphoebus's user avatar
0 votes
1 answer
1k views

What is the difference between CNN-LSTM and RNN?

I'm starting to study RNN for a project of video prediction, but I encounter these CNN-LSTM models. Initially, I thought that is another name for RNN, but I think I get it wrong. Since I'm a beginner ...
mario corradetti's user avatar
0 votes
0 answers
35 views

What could be causing the poor performance (MSE) of a dense neural network on a real time-series dataset?

I am trying to understand time series analysis and actually I am following the course "Sequences, Time Series and Prediction" in Coursera. The course is based on a synthetic dataset, ...
Hermes Morales's user avatar
0 votes
0 answers
51 views

Does it make sense to compare images (samples) with words (features)?

Consider the following paragraphs from the introduction of the chapter named Recurrent Neural Networks from the textbook titled Dive into Deep Learning So far we encountered two types of data: ...
hanugm's user avatar
  • 3,990
1 vote
1 answer
72 views

Is image machine translation done in two steps?

Suppose I have images of hand-written Japanese text. If I want to translate those images, would my ML algorithm be a 2-step model (for example, a CNN to convert the image into Japanese characters/...
cookiecutter's user avatar
0 votes
1 answer
54 views

Neural network for recognizing ship types based on location series

I am building a neural network for recognizing ship types based on a 1000-long series of location data (latitude-longitude, normalized to account for different km/longitude° metrics, so that vector ...
Bajczi Levente's user avatar
3 votes
1 answer
824 views

In a Temporal Convolutional Network, how is the receptive field different from the input size?

I'm playing around with TCN's lately and I don't understand one thing. How is the receptive field different from the input size? I think that the receptive field is the time window that TCN considers ...
MASTER OF CODE's user avatar
1 vote
1 answer
32 views

Is reconciling shape discrepancies the only purpose of padding?

Padding is a technique used in some of the domains of artificial intelligence. Data is generally available in different shapes. But in order to pass the data as input to a model in deep learning, the ...
hanugm's user avatar
  • 3,990
0 votes
0 answers
95 views

Feeding the output back to input in 3D CNN model

I am currently designing a Model which takes Input 3D Grid and Model Output at $t-1$. The model figure is described below I have two thoughts in training the model for above situation. Feed output $...
Rajat's user avatar
  • 1
-1 votes
0 answers
25 views

Document clustering from ordered pages list

I have a series of ordered pdf pages which own to different documents. Let me give you an example: Pages: 1 2 3 4 5 6 True Pages: 1 2 | 1 2 3 4 So I have like six ordered pages, two of which from ...
Frank's user avatar
  • 1
0 votes
1 answer
102 views

Must all CNNs and RNNs not have a fully connected layer in order to be considered as such?

In the paper Wrist-worn blood pressure tracking in healthy free-living individuals using neural networks, the authors talk about a combination of feed-forward and recurrent layers, as if FC layers ...
witdev's user avatar
  • 73
1 vote
0 answers
325 views

How do I infer exploding or vanishing gradients in Keras?

It may already be obvious that I am just a practitioner and just a beginner to Deep Learning. I am still figuring out lots of "WHY"s and "HOW"s of DL. So, for example, if I train a ...
Naveen Reddy Marthala's user avatar
3 votes
1 answer
84 views

Is there a common way to build a neural network that seeks to extract spatial and temporal information simultaneously?

Is there a common way to build a neural network that seeks to extract spatial and temporal information simultaneously? Is there an agreed up protocol on how to extract this information? What ...
ADA's user avatar
  • 165
1 vote
1 answer
75 views

What's a good neural network for this problem?

I am very new to the field of AI so please bear with me. Say there is a dice with three sides, -1,0 and 1, and I want to predict which side it lands on (so only one output is needed I guess). The ...
minusatwelfth's user avatar
1 vote
0 answers
47 views

How can one be sure that a particular neural network architecture would work?

Traditionally, when working with tabular data, one can be sure(or at least know) that a model works because the included features could explain a target variable, say "Price of a ticket" ...
Naveen Reddy Marthala's user avatar
2 votes
1 answer
187 views

Why are RNNs used in some computer vision problems?

I am learning computer vision. When I was going through implementations of various computer vision projects, some OCR problems used GRU or LSTM, while some did not. I understand that RNNs are used ...
Naveen Reddy Marthala's user avatar
1 vote
0 answers
38 views

Deep learning techniques with time-fixed, time-dependent and imaging data

I have a question about the use of deep learning techniques with time-fixed features and images (setting 1) and time-dependent features (setting 2). (I am pretty new to the deep learning world so ...
Miker's user avatar
  • 11
2 votes
0 answers
22 views

How do CNNs or RNNs "stack the feature of nodes by a specific order"?

I am trying to understand the following statement taken from the paper Graph Neural Networks: A Review of Methods and Applications (2019). Standard neural networks like CNNs and RNNs cannot handle ...
Jacob B's user avatar
  • 277
3 votes
0 answers
41 views

How to predict an event (or action) based on a window of time-series measurements?

I have an input vector $X$, which contains a series of measurements within a period, e.g. 100 measurements in 1 sec. The goal is to predict an event, let's say, moving forward, backward or static. I ...
Erick Medina's user avatar
1 vote
1 answer
113 views

Are there names for neural networks with a well-defined layer or neuron characteristics?

Are there names for neural networks with a well-defined layer or neuron characteristics? For example, a matrix that has the same number of rows and columns is called a square matrix. Is there an ...
lfgtm's user avatar
  • 230
1 vote
1 answer
127 views

Convert input dataset given in hex addresses to int

I have created an LSTM Neural Network which take as input the following format in an .csv file ...
estamos's user avatar
  • 157
1 vote
0 answers
34 views

Imposing contraints on sequence of image classifications

Are there example implementations of networks that apply constraints across sequences of image classifications where class labels are ordinal numbers? For example, to cause the output of a CNN to ...
bucklera's user avatar
3 votes
1 answer
88 views

From an implementation point of view, what are the main differences between an RNN and a CNN?

I understand that in general an RNN is good for time series data and a CNN image data, and have noticed many blogs explaining the fundamental differences in the models. As a beginner in machine ...
nilsinelabore's user avatar
3 votes
0 answers
59 views

Ideas on a network that can translate image differences into motor commands?

I'd like to design a network that gets two images (an image under construction, and an ideal image), and has to come up with an action vector for a simple motor command which would augment the image ...
SumakuTension's user avatar
1 vote
0 answers
25 views

Literature on Sequence Regresssion

I have some rated time-sequential data and I would like to test if an ANN can learn a correlation between my measurements and ratings. I suspect I could just try a CNN where 1 Dimension is time or an ...
jaaq's user avatar
  • 153
3 votes
1 answer
420 views

Why would we use attention in convolutional neural networks, and how would we apply it?

Attention has been used widely in recurrent networks to weight feature representations learned by the model. This is not a trivial task since recurrent networks have a hidden state that captures ...
Shrey's user avatar
  • 214
0 votes
1 answer
258 views

Are 1D CNNs really the appropriate model for human activity recognition?

This article on human activity recognition states that 1D convolutional neural networks work the best on the classification of human activities using data from the accelerometer. But I think that ...
user avatar
10 votes
4 answers
3k views

What are the models that have the potential to replace neural networks in the near future?

Are there possible models that have the potential to replace neural networks in the near future? And do we even need that? What is the worst thing about using neural networks in terms of efficiency?
Abaqus's user avatar
  • 121
1 vote
1 answer
106 views

How to manage high numbers of input layer data points

Not sure if this is the correct forum, but I have been working with a large (non-image) dataset that will eventually be used to train a neural network. I have been puzzling over how to manage wide ...
skyman's user avatar
  • 113
4 votes
2 answers
135 views

Do convolutional neural networks also have recurrent connections? [duplicate]

I asked my self this simple question while reading "Comment Abuse Classification with Deep Learning" by Chu and Jue. Indeed, they say at the end of the that It is clear that RNNs, specifically ...
Revolucion for Monica's user avatar
13 votes
5 answers
8k views

What is the fundamental difference between CNN and RNN?

What is the fundamental difference between convolutional neural networks and recurrent neural networks? Where are they applied?
Pradeep BV's user avatar
2 votes
0 answers
50 views

Recommendations on which architecture to use to guess appointment

I'm currently developping an application which allows psychologists to manage their schedule and budget. As a proof of concept, I would like to create an intelligent appointment service. There can be ...
Sylvain Cloutier's user avatar