i am extracting 30 facial keypoints (x,y) from an input image as per kaggle facialkeypoints competition.
How do i setup caffe to run a regression and produce 30 dimensional output??.
Input: 96x96 image
Output: 30 - (30 dimensions).
How do i setup caffe accordingly?. I am using EUCLIDEAN_LOSS (sum of squares) to get the regressed output. Here is a simple logistic regressor model using caffe but it is not working. Looks accuracy layer cannot handle multi-label output.
I0120 17:51:27.039113 4113 net.cpp:394] accuracy <- label_fkp_1_split_1
I0120 17:51:27.039135 4113 net.cpp:356] accuracy -> accuracy
I0120 17:51:27.039158 4113 net.cpp:96] Setting up accuracy
F0120 17:51:27.039201 4113 accuracy_layer.cpp:26] Check failed: bottom[1]->channels() == 1 (30 vs. 1)
*** Check failure stack trace: ***
@ 0x7f7c2711bdaa (unknown)
@ 0x7f7c2711bce4 (unknown)
@ 0x7f7c2711b6e6 (unknown)
Here is the layer file:
name: "LogReg"
layers {
name: "fkp"
top: "data"
top: "label"
type: HDF5_DATA
hdf5_data_param {
source: "train.txt"
batch_size: 100
}
include: { phase: TRAIN }
}
layers {
name: "fkp"
type: HDF5_DATA
top: "data"
top: "label"
hdf5_data_param {
source: "test.txt"
batch_size: 100
}
include: { phase: TEST }
}
layers {
name: "ip"
type: INNER_PRODUCT
bottom: "data"
top: "ip"
inner_product_param {
num_output: 30
}
}
layers {
name: "loss"
type: EUCLIDEAN_LOSS
bottom: "ip"
bottom: "label"
top: "loss"
}
layers {
name: "accuracy"
type: ACCURACY
bottom: "ip"
bottom: "label"
top: "accuracy"
include: { phase: TEST }
}
i found it :)
I replaced the SOFTLAYER to EUCLIDEAN_LOSS function and changed the number of outputs. It worked.
HINGE_LOSS is also another option.