# Frequently Asked Questions ## Q: How can I ensure that all the groundtruth boxes are used during train and eval? A: For the object detecion framework to be TPU-complient, we must pad our input tensors to static shapes. This means that we must pad to a fixed number of bounding boxes, configured by `InputReader.max_number_of_boxes`. It is important to set this value to a number larger than the maximum number of groundtruth boxes in the dataset. If an image is encountered with more bounding boxes, the excess boxes will be clipped. ## Q: AttributeError: 'module' object has no attribute 'BackupHandler' A: This BackupHandler (tf.contrib.slim.tfexample_decoder.BackupHandler) was introduced in tensorflow 1.5.0 so runing with earlier versions may cause this issue. It now has been replaced by object_detection.data_decoders.tf_example_decoder.BackupHandler. Whoever sees this issue should be able to resolve it by syncing your fork to HEAD. Same for LookupTensor. ## Q: AttributeError: 'module' object has no attribute 'LookupTensor' A: Similar to BackupHandler, syncing your fork to HEAD should make it work. ## Q: Why can't I get the inference time as reported in model zoo? A: The inference time reported in model zoo is mean time of testing hundreds of images with an internal machine. As mentioned in [Tensorflow detection model zoo](detection_model_zoo.md), this speed depends highly on one's specific hardware configuration and should be treated more as relative timing.