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I'm trying to build a CNN regression model. The input data is satellite images for 10 years.

The input shape is [10, 256,256, 10] which represents [Year, Image shape, Image Shape, Channels/Bands]

The output of the model is a number between 0-1 which is the percentage value of the area in the image.

these are the parameters used

CHANNELS=5
BATCH_SIZE=16
INPUT_SHAPE=(10,IMG_SIZE,IMG_SIZE,CHANNELS)
SAMPLES=100
LR=1e-7
EPOCHES=10

I'm using the Conv3D layer as an input layer as it provides the ability to provide volume data to the model, and the Dense layer as output.

Model: sequential_FLATTEN_100_5_16_SGD_1e-07_30_v1
_________________________________________________________________
Layer (type)                 Output Shape              Param #   
=================================================================
conv3d_3 (Conv3D)            (None, 10, 254, 254, 32)  1472      
_________________________________________________________________
max_pooling3d_3 (MaxPooling3 (None, 10, 127, 127, 32)  0         
_________________________________________________________________
conv3d_4 (Conv3D)            (None, 10, 125, 125, 64)  18496     
_________________________________________________________________
max_pooling3d_4 (MaxPooling3 (None, 10, 62, 62, 64)    0         
_________________________________________________________________
flatten_3 (Flatten)          (None, 2460160)           0         
_________________________________________________________________
dense_24 (Dense)             (None, 256)               629801216 
_________________________________________________________________
dense_25 (Dense)             (None, 1)                 257       
=================================================================
Total params: 629,821,441
Trainable params: 629,821,441
Non-trainable params: 0
_________________________________________________________________

This model gives the following score on the Training set:

mean_absolute_error: 0.09013315520024737
mean_squared_error: 0.11449361186977994
explained_variance_score: -0.2407465861253424
r2_score: -0.9382254392540899

Training data actual vs prediction plot model 1

And on the Validation set:

mean_absolute_error: 0.1923245317002776
mean_squared_error: 0.2579017795812263
explained_variance_score: -5.067052299015521
r2_score: -5.4177061135705475

Validation data actual vs prediction plot model 1

I also tried a different model as follow: In this only the first layer is Conv3D and the rest are Dense layers

Model: "sequential_FLATTEN_100_5_16_Adam_1e-07_30_v1"
_________________________________________________________________
Layer (type)                 Output Shape              Param #   
=================================================================
conv3d_1 (Conv3D)            (None, 4, 250, 250, 32)   54912     
_________________________________________________________________
max_pooling3d_1 (MaxPooling3 (None, 1, 83, 83, 32)     0         
_________________________________________________________________
flatten_2 (Flatten)          (None, 220448)            0         
_________________________________________________________________
dense_16 (Dense)             (None, 512)               112869888 
_________________________________________________________________
dense_17 (Dense)             (None, 256)               131328    
_________________________________________________________________
dense_18 (Dense)             (None, 128)               32896     
_________________________________________________________________
dense_19 (Dense)             (None, 64)                8256      
_________________________________________________________________
dense_20 (Dense)             (None, 32)                2080      
_________________________________________________________________
dense_21 (Dense)             (None, 16)                528       
_________________________________________________________________
dense_22 (Dense)             (None, 8)                 136       
_________________________________________________________________
dense_23 (Dense)             (None, 1)                 9         
=================================================================
Total params: 113,100,033
Trainable params: 113,100,033
Non-trainable params: 0
_________________________________________________________________

Which gave me the following score on the Training set:

mean_absolute_error: 0.08475626941395917
mean_squared_error: 0.1637630610914996
explained_variance_score: 0.19943303382780664
r2_score: 0.19214565669613703

Training data actual vs prediction plot model 2

And on the Validation set:

mean_absolute_error: 0.15135902269457854
mean_squared_error: 0.2650686092962602
explained_variance_score: -1.7471740284409094
r2_score: -1.7776585146674124

Validation data actual vs prediction plot model 2

As you can see the model has very low MAE and MSE but the R2-Score and Explained-Variance-Score are also low at the same time.

How can I improve these results?. Also when the sample size is increased the model starts to predict similar values for all inputs.

3 Answers 3

2

I just notice the number of parameters so huge for such task. May be suffering from Vanishing or Exploding gradient. Try to reduce the feature extractor dimension as small as possible. You may in-between apply dropout and regularization as well.

0

You may want to have a look here: https://online.stat.psu.edu/stat462/node/170/

0

If the red line denotes the prediction line by the model, then I think your code lacks some optimization to generalize the prediction more, in essence it should be a curve at least. Refer below url which is a tutorial of CNN regression:

https://www.datatechnotes.com/2019/12/how-to-fit-regression-data-with-cnn.html?m=1

In above tutorial, the output graph is generalized, which reduces the error. You can try the dame steps perhaps.

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