Follow-up to stats.stackexchange.com/questions/373266/yolo-v3-loss-function:
In trying to finalize the development of my training labels and loss function I'm confused by the part in bold in the quote below (from the YOLOv3 paper). I'm considering that "bounding box prior" is synonymous with "anchor".
YOLOv3 predicts an objectness score for each bounding box using logistic regression. This should be 1 if the bounding box prior overlaps a ground truth object by more than any other bounding box prior. If the bounding box prior is not the best but does overlap a ground truth object by more than some threshold, we ignore the prediction, following [17]. We use the threshold of .5. Unlike [17] our system only assigns one bounding box prior for each ground truth object. If a bounding box prior is not assigned to a ground truth object, it incurs no loss for coordinate or class predictions, only objectness.
Question 1
Is the bold portion above saying that if there is more than one anchor with an IOU > 0.5, then the ground truth object is not considered at all? It makes sense that the anchor with the highest/best IOU be responsible for a particular ground truth object, but the threshold doesn't make sense to me. It seems to be implying a threshold being considered for the anchor with the second-highest IOU ("not the best but does overlap a ground truth object by more than some threshold").
Question 2
Does YOLOv3 still make use of $\lambda_{coord}$ and $\lambda_{noobj}$? Assuming so and putting it all together, does the below loss function look correct? The below assumes a prediction vector of $t_x$, $t_y$, $t_w$, $t_h$, $t_o$, $s_1$, $…$, $s_C$ and a corresponding ground truth label of $\hat{t}_x$, $\hat{t}_y$, $\hat{t}_w$, $\hat{t}_h$, $\hat{y}_o$, $\hat{y}_1$, $…$, $\hat{y}_C$, where C equals the number of total classes, $y \in \{0,1\}$, and $BCE$ represents binary cross-entropy.
$$ \lambda_{coord} \sum_{i=0}^{S^2} \sum_{j=0}^{B} \mathbb{1}^{obj}_{i,j} \big[ (t_x - \hat{t}_x)^2 + (t_y - \hat{t}_y)^2 + (t_w - \hat{t}_w)^2 + (t_h - \hat{t}_h)^2 \big] \\ + \sum_{i=0}^{S^2} \sum_{j=0}^{B} \mathbb{1}^{obj}_{i,j} \big[ - log(\sigma(t_o)) + \sum_{k=1}^{C} BCE(\hat{y}_k, \sigma(s_k)) \big] \\ + \lambda_{noobj} \sum_{i=0}^{S^2} \sum_{j=0}^{B} \mathbb{1}^{noobj}_{i,j} \big[ -log(1-\sigma(t_o)) \big] $$