CTCLoss#
Versioned name: CTCLoss-4
Category: Sequence processing
Short description: CTCLoss computes the CTC (Connectionist Temporal Classification) Loss.
Detailed description:
CTCLoss operation is presented in Connectionist Temporal Classification - Labeling Unsegmented Sequence Data with Recurrent Neural Networks: Graves et al., 2016
CTCLoss estimates likelihood that a target labels[i,:] can occur (or is real) for given input sequence of logits logits[i,:,:]. Briefly, CTCLoss operation finds all sequences aligned with a target labels[i,:], computes log-probabilities of the aligned sequences using logits[i,:,:] and computes a negative sum of these log-probabilities.
Input sequences of logits logits can have different lengths. The length of each sequence logits[i,:,:] equals logit_length[i].
A length of target sequence labels[i,:] equals label_length[i]. The length of the target sequence must not be greater than the length of corresponding input sequence logits[i,:,:].
Otherwise, the operation behaviour is undefined.
CTCLoss calculation scheme:
- Compute probability of - j-th character at time step- tfor- i-th input sequence from- logitsusing softmax formula:
- For a given - i-th target from- labels[i,:]find all aligned paths. A path- S = (c1,c2,...,cT)is aligned with a target- G=(g1,g2,...,gT)if both chains are equal after decoding. The decoding extracts substring of length- label_length[i]from a target- G, merges repeated characters in- Gin case preprocess_collapse_repeated equal to true and finds unique elements in the order of character occurrence in case unique equal to true. The decoding merges repeated characters in- Sin case ctc_merge_repeated equal to true and removes blank characters represented by- blank_index. By default,- blank_indexis equal to- C-1, where- Cis a number of classes including the blank. For example, in case default ctc_merge_repeated, preprocess_collapse_repeated, unique and- blank_indexa target sequence- G=(0,3,2,2,2,2,2,4,3)of a length- label_length[i]=4is processed to- (0,3,2,2)and a path- S=(0,0,4,3,2,2,4,2,4)of a length- logit_length[i]=9is also processed to- (0,3,2,2), where- C=5. There exist other paths that are also aligned with- G, for instance,- 0,4,3,3,2,4,2,2,2. Paths checked for alignment with a target- label[:,i]must be of length- logit_length[i] = L_i. Compute probabilities of these aligned paths (alignments) as follows:
- Finally, compute negative log of summed up probabilities of all found alignments: 
Note 1: This calculation scheme does not provide steps for optimal implementation and primarily serves for better explanation.
Note 2: This is recommended to compute a log-probability \(\ln p(S)\) for an aligned path as a sum of log-softmax of input logits. It helps to avoid underflow and overflow during calculation. Having log-probabilities for aligned paths, log of summed up probabilities for these paths can be computed as follows:
Attributes
- preprocess_collapse_repeated - Description: preprocess_collapse_repeated is a flag for a preprocessing step before loss calculation, wherein repeated labels in - labels[i,:]passed to the loss are merged into single labels.
- Range of values: true or false 
- Type: - boolean
- Default value: false 
- Required: no 
 
- ctc_merge_repeated - Description: ctc_merge_repeated is a flag for merging repeated characters in a potential alignment during the CTC loss calculation. 
- Range of values: true or false 
- Type: - boolean
- Default value: true 
- Required: no 
 
- unique - Description: unique is a flag to find unique elements for a target - labels[i,:]before matching with potential alignments. Unique elements in the processed- labels[i,:]are sorted in the order of their occurrence in original- labels[i,:]. For example, the processed sequence for- labels[i,:]=(0,1,1,0,1,3,3,2,2,3)of length- label_length[i]=10will be- (0,1,3,2)in case unique equal to true.
- Range of values: true or false 
- Type: - boolean
- Default value: false 
- Required: no 
 
Inputs
- 1: - logits- Input tensor with a batch of sequences of logits. Type of elements is T_F. Shape of the tensor is- [N, T, C], where- Nis the batch size,- Tis the maximum sequence length and- Cis the number of classes including the blank. Required.
- 2: - logit_length- 1D input tensor of type T1 and of a shape- [N]. The tensor must consist of non-negative values not greater than- T. Lengths of input sequences of logits- logits[i,:,:]. Required.
- 3: - labels- 2D tensor with shape- [N, T]of type T2. A length of a target sequence- labels[i,:]is equal to- label_length[i]and must contain of integers from a range- [0; C-1]except- blank_index. Required.
- 4: - label_length- 1D tensor of type T1 and of a shape- [N]. The tensor must consist of non-negative values not greater than- Tand- label_length[i] <= logit_length[i]for all possible- i. Required.
- 5: - blank_index- Scalar of type T2. Set the class index to use for the blank label. Default value is- C-1. Optional.
Output
- 1: Output tensor with shape - [N], negative sum of log-probabilities of alignments. Type of elements is T_F.
Types
- T_F: any supported floating-point type. 
- T1, T2: - int32or- int64.
Example
<layer ... type="CTCLoss" ...>
    <input>
        <port id="0">
            <dim>8</dim>
            <dim>20</dim>
            <dim>128</dim>
        </port>
        <port id="1">
            <dim>8</dim>
        </port>
        <port id="2">
            <dim>8</dim>
            <dim>20</dim>
        </port>
        <port id="3">
            <dim>8</dim>
        </port>
        <port id="4">  <!-- blank_index value is: 120 -->
    </input>
    <output>
        <port id="0">
            <dim>8</dim>
        </port>
    </output>
</layer>