I have been using OpenCV's DNN module on a Raspberry Pi 4, which requires a frozen inference graph (.pb file) and corresponding text graph file (.pbtxt file).
With the pre-trained ssd_mobilenet_v3_small_coco from TF1 model zoo and using the tf_text_graph_ssd.py script from OpenCV to generate the pbtxt file, this runs successfully on the Raspberry at an average 5 FPS.
I then wanted to try and speed this up, by training this model for just one class. After banging my head around of errors and dependency versions, I have gotten the training to work. I built a dataset, labelled the images, created all the necessary files. Used the ssdlite_mobilenet_v3_small_320x320_coco.config from sample configs, set all the paths, pointed the fine-tune-checkpoint to the model folder, set number of classes to 1 and batch size to 16.
The model_train.py runs and it appears to yield results although I'm not quite sure how to interpret them. I have trained it for 100K steps, then exported a frozen inference graph, and again used the tf_text_graph_ssd.py to generate a pbtxt file. I run these on my raspberry pi app and it throws no errors, runs at 10FPS, but detects absolutely nothing.
So either I'm doing something wrong in the training, or in the export or pbtxt generation. No idea where to go from here. Hoping someone can point me in the right direction. Below are some shots of the Tensorboard output.