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@@ -111,17 +111,15 @@ The metric takes four optional input parameters: __label2id__, __stuff__, __per_
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  ["WATER", "SKY", "LAND", "CONSTRUCTION", "ICE", "OWN_BOAT"]`
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  * `per_class: bool = True`: By default, the results are split up per class.
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- Setting this to False will aggregate the results:
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- * average the "scores"
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- * sum up the "numbers"
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  * `split_sq_rq: bool = True`: By default, the PQ-score is returned in three parts: the PQ score itself, and split into the segmentation quality (SQ) and recognition quality (RQ) part.
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  Setting this to False will return the PQ score only (PQ=RQ*SQ).
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  ## Output Values
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  A dictionary containing the following keys:
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- * __scores__: This is a dictionary, that contains a key for each label, if `per_class == True`. Otherwise it only contains the key __all__.
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  For each key, it contains a list that holds the scores in the following order: PQ, SQ and RQ. If `split_sq_rq == False`, the list consists of PQ only.
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- * __numbers__: This is a dictionary, that contains a key for each label, if `per_class == True`. Otherwise it only contains the key __all__.
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  For each key, it contains a list that consists of four elements: TP, FP, FN and IOU:
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  * __TP__: number of true positive predictions
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  * __FP__: number of false positive predictions
 
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  ["WATER", "SKY", "LAND", "CONSTRUCTION", "ICE", "OWN_BOAT"]`
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  * `per_class: bool = True`: By default, the results are split up per class.
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+ Setting this to False will aggregate the results (average the _scores_, sum up the _numbers_; see below for explanation of _scoress_ and _numbers_)
 
 
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  * `split_sq_rq: bool = True`: By default, the PQ-score is returned in three parts: the PQ score itself, and split into the segmentation quality (SQ) and recognition quality (RQ) part.
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  Setting this to False will return the PQ score only (PQ=RQ*SQ).
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  ## Output Values
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  A dictionary containing the following keys:
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+ * __scores__: This is a dictionary, that contains a key for each label, if `per_class == True`. Otherwise it only contains the key _all_.
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  For each key, it contains a list that holds the scores in the following order: PQ, SQ and RQ. If `split_sq_rq == False`, the list consists of PQ only.
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+ * __numbers__: This is a dictionary, that contains a key for each label, if `per_class == True`. Otherwise it only contains the key _all_.
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  For each key, it contains a list that consists of four elements: TP, FP, FN and IOU:
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  * __TP__: number of true positive predictions
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  * __FP__: number of false positive predictions